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Effect of Boron Fertilizer on Flower and Fruit Drop ofPrunes 被引量:1
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作者 YANGXIAOLING BAOSHIDAN 《Pedosphere》 SCIE CAS CSCD 1999年第4期363-368,共6页
Effect of boron on falling of prunes (Prunus mume, Sieb, et Zucc) was studied by applying 50 g borateper tree into soil on December 15, 1993 (soil-B) and spraying leaves leves evenly twice with 1.5 g kg^-1 boratesolut... Effect of boron on falling of prunes (Prunus mume, Sieb, et Zucc) was studied by applying 50 g borateper tree into soil on December 15, 1993 (soil-B) and spraying leaves leves evenly twice with 1.5 g kg^-1 boratesolution on March 1 and 8, 1994 (spray-B) on the soil with 0.28 mg kg--1’ rapidly available B. Comparedwith no borate treatment (CK), B concentrations of leaves, short branches and flowers were higher and thepercentage of flower and fruit drop was lower in the treatments of soil-B and spray-B. B fertilizer increased Bconcentrations in flowers, leaves and short branches, promoted pollen germination, reduced the percentage offall of flowers and fruits of prunes, increased the percentage of fertile fruits, and thus increased yields of prunesby 46% and 34.3% in the treatments of soil-B and spray-B, respectively. It could be inferred preliminarilythat if B concentration of leaves was lower than 35 mg kg--1, the prunes should be fertilized with B. Themeasured leaves should be picked from branches (3-10 cm in length) germinating from the central sectionof a tree crown during the last ten days of May to the early days of June. 展开更多
关键词 BORON FLOWERS FRUITS prunes
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Synaptic pruning mechanisms and application of emerging imaging techniques in neurological disorders
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作者 Yakang Xing Yi Mo +1 位作者 Qihui Chen Xiao Li 《Neural Regeneration Research》 2026年第5期1698-1714,共17页
Synaptic pruning is a crucial process in synaptic refinement,eliminating unstable synaptic connections in neural circuits.This process is triggered and regulated primarily by spontaneous neural activity and experience... Synaptic pruning is a crucial process in synaptic refinement,eliminating unstable synaptic connections in neural circuits.This process is triggered and regulated primarily by spontaneous neural activity and experience-dependent mechanisms.The pruning process involves multiple molecular signals and a series of regulatory activities governing the“eat me”and“don't eat me”states.Under physiological conditions,the interaction between glial cells and neurons results in the clearance of unnecessary synapses,maintaining normal neural circuit functionality via synaptic pruning.Alterations in genetic and environmental factors can lead to imbalanced synaptic pruning,thus promoting the occurrence and development of autism spectrum disorder,schizophrenia,Alzheimer's disease,and other neurological disorders.In this review,we investigated the molecular mechanisms responsible for synaptic pruning during neural development.We focus on how synaptic pruning can regulate neural circuits and its association with neurological disorders.Furthermore,we discuss the application of emerging optical and imaging technologies to observe synaptic structure and function,as well as their potential for clinical translation.Our aim was to enhance our understanding of synaptic pruning during neural development,including the molecular basis underlying the regulation of synaptic function and the dynamic changes in synaptic density,and to investigate the potential role of these mechanisms in the pathophysiology of neurological diseases,thus providing a theoretical foundation for the treatment of neurological disorders. 展开更多
关键词 CHEMOKINE COMPLEMENT experience-dependent driven synaptic pruning imaging techniques NEUROGLIA signaling pathways synapse elimination synaptic pruning
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FIREproof:Intricacies of microglial biology
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作者 Wei Cao 《Neural Regeneration Research》 2026年第2期663-664,共2页
Microglia are the macrophages that populate the brain parenchyma.Research in the past decades has identified them as both essential guardians of the brain and significant contributors to various neurological diseases.... Microglia are the macrophages that populate the brain parenchyma.Research in the past decades has identified them as both essential guardians of the brain and significant contributors to various neurological diseases.A highly versatile cell type,microglia have been shown to fulfill a multitude of critical roles in the central nervous system,including facilitating neurogenesis and myelination,pruning synapses,removing debris and waste,modulating neuronal activity,supporting the blood-brain barrier,repairing tissue damage,and surveilling against microbial invasions under physiological conditions(Prinz et al.,2021;Paolicelli et al.,2022). 展开更多
关键词 neurological diseases facilitating neurogenesis debris removal central nervous systemincluding NEUROGENESIS MYELINATION synapse pruning brain
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Detection and Recognition of Spray Code Numbers on Can Surfaces Based on OCR
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作者 Hailong Wang Junchao Shi 《Computers, Materials & Continua》 SCIE EI 2025年第1期1109-1128,共20页
A two-stage algorithm based on deep learning for the detection and recognition of can bottom spray codes and numbers is proposed to address the problems of small character areas and fast production line speeds in can ... A two-stage algorithm based on deep learning for the detection and recognition of can bottom spray codes and numbers is proposed to address the problems of small character areas and fast production line speeds in can bottom spray code number recognition.In the coding number detection stage,Differentiable Binarization Network is used as the backbone network,combined with the Attention and Dilation Convolutions Path Aggregation Network feature fusion structure to enhance the model detection effect.In terms of text recognition,using the Scene Visual Text Recognition coding number recognition network for end-to-end training can alleviate the problem of coding recognition errors caused by image color distortion due to variations in lighting and background noise.In addition,model pruning and quantization are used to reduce the number ofmodel parameters to meet deployment requirements in resource-constrained environments.A comparative experiment was conducted using the dataset of tank bottom spray code numbers collected on-site,and a transfer experiment was conducted using the dataset of packaging box production date.The experimental results show that the algorithm proposed in this study can effectively locate the coding of cans at different positions on the roller conveyor,and can accurately identify the coding numbers at high production line speeds.The Hmean value of the coding number detection is 97.32%,and the accuracy of the coding number recognition is 98.21%.This verifies that the algorithm proposed in this paper has high accuracy in coding number detection and recognition. 展开更多
关键词 Can coding recognition differentiable binarization network scene visual text recognition model pruning and quantification transport model
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Impact of training methods and biostimulant applications on sweet pepper(Capsicum annuum) yield and nutritional values:Under greenhouse condition
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作者 Hawar Sleman Halshoy Sadik Kasim Sadik 《Horticultural Plant Journal》 2025年第1期290-302,共13页
Pepper (Capsicum annuum L.) is an important agricultural crop because of the nutritional value of the fruit and its economic importance.Various techniques have been practiced to enhance pepper's productivity and n... Pepper (Capsicum annuum L.) is an important agricultural crop because of the nutritional value of the fruit and its economic importance.Various techniques have been practiced to enhance pepper's productivity and nutritional value.Therefore,this study was conducted to determine the impact of different training methods and biostimulant applications on sweet pepper plants'growth,yield,and chemical composition under greenhouse conditions.For the training method,unpruned plants were compared with one stem and two stem plants.Unpruned plants had the fruit number of 33.98,fruit weight of 2.18 kg·plant^(-1),and total marketable yield of 1 090.0 kg·hm^(-2).One stem plant gave the best average fruit weight of 86.63 g,vitamin C content of 13.66 mg·kg^(-1)FW,and TSS content of 7.21%.However,two stem plants had the highest fruit setting of 62.41%,carotenoid content of 0.14 mg·kg^(-1)FW,and fruit chlorophyll content of 3.57 mg·kg^(-1)FW.For biostimulant applications,control plants were compared with the Disper Root (DR) and Disper Vital (DV).DR application significantly increased total sugar,carotenoid,fruit chlorophyll,and TSS contents compared to the control and DV applications.While,applying DV increased fruit setting,plant fruit number,weight,and total marketable yield.In addition,integrating one stem plant with the DR application improved fiber,vitamin C,and TSS contents significantly.Two stem plants,and the DV application improved fruit setting and carotenoid content.Thus,one and two stem training methods integrated with the DR and DV biostimulant applications could be considered for developing agricultural practices to obtain commercial yield and improve the nutrition values of sweet peppers,as unpruned plants without biostimulant applications have a negative impact. 展开更多
关键词 Bell pepper Pepper pruning Pruning plants Shoot pruning Biostimulators SUSTAINABILITY
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SFPBL:Soft Filter Pruning Based on Logistic Growth Differential Equation for Neural Network
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作者 Can Hu Shanqing Zhang +2 位作者 Kewei Tao Gaoming Yang Li Li 《Computers, Materials & Continua》 2025年第3期4913-4930,共18页
The surge of large-scale models in recent years has led to breakthroughs in numerous fields,but it has also introduced higher computational costs and more complex network architectures.These increasingly large and int... The surge of large-scale models in recent years has led to breakthroughs in numerous fields,but it has also introduced higher computational costs and more complex network architectures.These increasingly large and intricate networks pose challenges for deployment and execution while also exacerbating the issue of network over-parameterization.To address this issue,various network compression techniques have been developed,such as network pruning.A typical pruning algorithm follows a three-step pipeline involving training,pruning,and retraining.Existing methods often directly set the pruned filters to zero during retraining,significantly reducing the parameter space.However,this direct pruning strategy frequently results in irreversible information loss.In the early stages of training,a network still contains much uncertainty,and evaluating filter importance may not be sufficiently rigorous.To manage the pruning process effectively,this paper proposes a flexible neural network pruning algorithm based on the logistic growth differential equation,considering the characteristics of network training.Unlike other pruning algorithms that directly reduce filter weights,this algorithm introduces a three-stage adaptive weight decay strategy inspired by the logistic growth differential equation.It employs a gentle decay rate in the initial training stage,a rapid decay rate during the intermediate stage,and a slower decay rate in the network convergence stage.Additionally,the decay rate is adjusted adaptively based on the filter weights at each stage.By controlling the adaptive decay rate at each stage,the pruning of neural network filters can be effectively managed.In experiments conducted on the CIFAR-10 and ILSVRC-2012 datasets,the pruning of neural networks significantly reduces the floating-point operations while maintaining the same pruning rate.Specifically,when implementing a 30%pruning rate on the ResNet-110 network,the pruned neural network not only decreases floating-point operations by 40.8%but also enhances the classification accuracy by 0.49%compared to the original network. 展开更多
关键词 Filter pruning channel pruning CNN complexity deep neural networks filtering theory logistic model
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Real-Time Lightweight Convolutional Neural Network for Polyp Detection in Endoscope Images
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作者 SI Bingqi PANG Chenxi +2 位作者 WANG Zhiwu JIANG Pingping YAN Guozheng 《Journal of Shanghai Jiaotong university(Science)》 2025年第3期521-534,共14页
Colorectal cancer is the most common cancer with a second mortality rate.Polyp lesion is a precursor symptom of colorectal cancer.Detection and removal of polyps can effectively reduce the mortality of patients in the... Colorectal cancer is the most common cancer with a second mortality rate.Polyp lesion is a precursor symptom of colorectal cancer.Detection and removal of polyps can effectively reduce the mortality of patients in the early period.However,mass images will be generated during an endoscopy,which will greatly increase the workload of doctors,and long-term mechanical screening of endoscopy images will also lead to a high misdiagnosis rate.Aiming at the problem that computer-aided diagnosis models deeply depend on the computational power in the polyp detection task,we propose a lightweight model,coordinate attention-YOLOv5-Lite-Prune,based on the YOLOv5 algorithm,which is different from state-of-the-art methods proposed by the existing research that applied object detection models or their variants directly to prediction task without any lightweight processing,such as faster region-based convolutional neural networks,YOLOv3,YOLOv4,and single shot multibox detector.The innovations of our model are as follows:First,the lightweight EfficientNetLite network is introduced as the new feature extraction network.Second,the depthwise separable convolution and its improved modules with different attention mechanisms are used to replace the standard convolution in the detection head structure.Then,theα-intersection over union loss function is applied to improve the precision and convergence speed of the model.Finally,the model size is compressed with a pruning algorithm.Our model effectively reduces parameter amount and computational complexity without significant accuracy loss.Therefore,the model can be successfully deployed on the embedded deep learning platform,and detect polyps with a speed above 30 frames per second,which means the model gets rid of the limitation that deep learning models must rely on high-performance servers. 展开更多
关键词 YOLOv5 polyp lesions object detection LIGHTWEIGHT weight pruning
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Optimizing BERT for Bengali Emotion Classification: Evaluating Knowledge Distillation, Pruning, and Quantization
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作者 Md Hasibur Rahman Mohammed Arif Uddin +1 位作者 Zinnat Fowzia Ria Rashedur M.Rahman 《Computer Modeling in Engineering & Sciences》 2025年第2期1637-1666,共30页
The rapid growth of digital data necessitates advanced natural language processing(NLP)models like BERT(Bidi-rectional Encoder Representations from Transformers),known for its superior performance in text classificati... The rapid growth of digital data necessitates advanced natural language processing(NLP)models like BERT(Bidi-rectional Encoder Representations from Transformers),known for its superior performance in text classification.However,BERT’s size and computational demands limit its practicality,especially in resource-constrained settings.This research compresses the BERT base model for Bengali emotion classification through knowledge distillation(KD),pruning,and quantization techniques.Despite Bengali being the sixth most spoken language globally,NLP research in this area is limited.Our approach addresses this gap by creating an efficient BERT-based model for Bengali text.We have explored 20 combinations for KD,quantization,and pruning,resulting in improved speedup,fewer parameters,and reduced memory size.Our best results demonstrate significant improvements in both speed and efficiency.For instance,in the case of mBERT,we achieved a 3.87×speedup and 4×compression ratio with a combination of Distil+Prune+Quant that reduced parameters from 178 to 46 M,while the memory size decreased from 711 to 178 MB.These results offer scalable solutions for NLP tasks in various languages and advance the field of model compression,making these models suitable for real-world applications in resource-limited environments. 展开更多
关键词 Bengali NLP black-box distillation emotion classification model compression post-training quantization unstructured pruning
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A Fast Automatic Road Crack Segmentation Method Based on Deep Learning with Model Compression Framework
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作者 Minggang Xu Chong Li +4 位作者 Xiangli Kong Yuming Wu Zhixiang Lu Jionglong Su Zhun Fan 《Journal of Beijing Institute of Technology》 2025年第4期388-404,共17页
Computer-vision and deep-learning techniques are widely applied to detect,monitor,and assess pavement conditions including road crack detection.Traditional methods fail to achieve satisfactory accuracy and generalizat... Computer-vision and deep-learning techniques are widely applied to detect,monitor,and assess pavement conditions including road crack detection.Traditional methods fail to achieve satisfactory accuracy and generalization performance in for crack detection.Complex network model can generate redundant feature maps and computational complexity.Therefore,this paper proposes a novel model compression framework based on deep learning to detect road cracks,which can improve the detection efficiency and accuracy.A distillation loss function is proposed to compress the teacher model,followed by channel pruning.Meanwhile,a multi-dilation model is proposed to improve the accuracy of the model pruned.The proposed method is tested on the public database CrackForest dataset(CFD).The experimental results show that the proposed method is more efficient and accurate than other state-of-art methods. 展开更多
关键词 automatic road crack detection deep learning U-net DISTILLATION channel pruning multi-dilation model
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Improved YOLOv8s Detection Algorithm for Remote Sensing Images
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作者 Lunming Qin Wenquan Mei +2 位作者 Haoyang Cui Houqin Bian Xi Wang 《Journal of Beijing Institute of Technology》 2025年第3期278-289,共12页
In response to challenges posed by complex backgrounds,diverse target angles,and numerous small targets in remote sensing images,alongside the issue of high resource consumption hindering model deployment,we propose a... In response to challenges posed by complex backgrounds,diverse target angles,and numerous small targets in remote sensing images,alongside the issue of high resource consumption hindering model deployment,we propose an enhanced,lightweight you only look once version 8 small(YOLOv8s)detection algorithm.Regarding network improvements,we first replace tradi-tional horizontal boxes with rotated boxes for target detection,effectively addressing difficulties in feature extraction caused by varying target angles.Second,we design a module integrating convolu-tional neural networks(CNN)and Transformer components to replace specific C2f modules in the backbone network,thereby expanding the model’s receptive field and enhancing feature extraction in complex backgrounds.Finally,we introduce a feature calibration structure to mitigate potential feature mismatches during feature fusion.For model compression,we employ a lightweight channel pruning technique based on localized mean average precision(LMAP)to eliminate redundancies in the enhanced model.Although this approach results in some loss of detection accuracy,it effec-tively reduces the number of parameters,computational load,and model size.Additionally,we employ channel-level knowledge distillation to recover accuracy in the pruned model,further enhancing detection performance.Experimental results indicate that the enhanced algorithm achieves a 6.1%increase in mAP50 compared to YOLOv8s,while simultaneously reducing parame-ters,computational load,and model size by 57.7%,28.8%,and 52.3%,respectively. 展开更多
关键词 YOLOv8s remote sensing image target detection model pruning knowledge distillation
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A Black-Box Speech Adversarial Attack Method Based on Enhanced Neural Predictors in Industrial IoT
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作者 Yun Zhang Zhenhua Yu +2 位作者 Xufei Hu Xuya Cong Ou Ye 《Computers, Materials & Continua》 2025年第9期5403-5426,共24页
Devices in Industrial Internet of Things are vulnerable to voice adversarial attacks.Studying adversarial speech samples is crucial for enhancing the security of automatic speech recognition systems in Industrial Inte... Devices in Industrial Internet of Things are vulnerable to voice adversarial attacks.Studying adversarial speech samples is crucial for enhancing the security of automatic speech recognition systems in Industrial Internet of Things devices.Current black-box attack methods often face challenges such as complex search processes and excessive perturbation generation.To address these issues,this paper proposes a black-box voice adversarial attack method based on enhanced neural predictors.This method searches for minimal perturbations in the perturbation space,employing an optimization process guided by a self-attention neural predictor to identify the optimal perturbation direction.This direction is then applied to the original sample to generate adversarial samples.To improve search efficiency,a pruning strategy is designed to discard samples below a threshold in the early search stages,reducing the number of searches.Additionally,a dynamic factor based on feedback from querying the automatic speech recognition system is introduced to adaptively adjust the search step size,further accelerating the search process.To validate the performance of the proposed method,experiments are conducted on the LibriSpeech dataset.Compared with the mainstream methods,the proposed method improves the signal-to-noise ratio by 0.8 dB,increases sample similarity by 0.43%,and reduces the average number of queries by 7%.Experimental results demonstrate that the proposed method offers better attack effectiveness and stealthiness. 展开更多
关键词 Speech recognition adversarial attack self attention pruning strategy
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Active Protection Scheme of DNN Intellectual Property Rights Based on Feature Layer Selection and Hyperchaotic Mapping
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作者 Xintao Duan Yinhang Wu +1 位作者 Zhao Wang Chuan Qin 《Computers, Materials & Continua》 2025年第9期4887-4906,共20页
Deep neural network(DNN)models have achieved remarkable performance across diverse tasks,leading to widespread commercial adoption.However,training high-accuracy models demands extensive data,substantial computational... Deep neural network(DNN)models have achieved remarkable performance across diverse tasks,leading to widespread commercial adoption.However,training high-accuracy models demands extensive data,substantial computational resources,and significant time investment,making them valuable assets vulnerable to unauthorized exploitation.To address this issue,this paper proposes an intellectual property(IP)protection framework for DNN models based on feature layer selection and hyper-chaotic mapping.Firstly,a sensitivity-based importance evaluation algorithm is used to identify the key feature layers for encryption,effectively protecting the core components of the model.Next,the L1 regularization criterion is applied to further select high-weight features that significantly impact the model’s performance,ensuring that the encryption process minimizes performance loss.Finally,a dual-layer encryption mechanism is designed,introducing perturbations into the weight values and utilizing hyperchaotic mapping to disrupt channel information,further enhancing the model’s security.Experimental results demonstrate that encrypting only a small subset of parameters effectively reduces model accuracy to random-guessing levels while ensuring full recoverability.The scheme exhibits strong robustness against model pruning and fine-tuning attacks and maintains consistent performance across multiple datasets,providing an efficient and practical solution for authorization-based DNN IP protection. 展开更多
关键词 DNN IP protection active authorization control model weight selection hyperchaotic mapping model pruning
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Greedy Pruning Algorithm for DETR Architecture Networks Based on Global Optimization
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作者 HUANG Qiubo XU Jingsai +2 位作者 ZHANG Yakui WANG Mei CHEN Dehua 《Journal of Donghua University(English Edition)》 2025年第1期96-105,共10页
End-to-end object detection Transformer(DETR)successfully established the paradigm of the Transformer architecture in the field of object detection.Its end-to-end detection process and the idea of set prediction have ... End-to-end object detection Transformer(DETR)successfully established the paradigm of the Transformer architecture in the field of object detection.Its end-to-end detection process and the idea of set prediction have become one of the hottest network architectures in recent years.There has been an abundance of work improving upon DETR.However,DETR and its variants require a substantial amount of memory resources and computational costs,and the vast number of parameters in these networks is unfavorable for model deployment.To address this issue,a greedy pruning(GP)algorithm is proposed,applied to a variant denoising-DETR(DN-DETR),which can eliminate redundant parameters in the Transformer architecture of DN-DETR.Considering the different roles of the multi-head attention(MHA)module and the feed-forward network(FFN)module in the Transformer architecture,a modular greedy pruning(MGP)algorithm is proposed.This algorithm separates the two modules and applies their respective optimal strategies and parameters.The effectiveness of the proposed algorithm is validated on the COCO 2017 dataset.The model obtained through the MGP algorithm reduces the parameters by 49%and the number of floating point operations(FLOPs)by 44%compared to the Transformer architecture of DN-DETR.At the same time,the mean average precision(mAP)of the model increases from 44.1%to 45.3%. 展开更多
关键词 model pruning object detection Transformer(DETR) Transformer architecture object detection
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Hierarchical Shape Pruning for 3D Sparse Convolution Networks
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作者 Haiyan Long Chonghao Zhang +2 位作者 Xudong Qiu Hai Chen Gang Chen 《Computers, Materials & Continua》 2025年第8期2975-2988,共14页
3D sparse convolution has emerged as a pivotal technique for efficient voxel-based perception in autonomous systems,enabling selective feature extraction from non-empty voxels while suppressing computational waste.Des... 3D sparse convolution has emerged as a pivotal technique for efficient voxel-based perception in autonomous systems,enabling selective feature extraction from non-empty voxels while suppressing computational waste.Despite its theoretical efficiency advantages,practical implementations face under-explored limitations:the fixed geometric patterns of conventional sparse convolutional kernels inevitably process non-contributory positions during sliding-window operations,particularly in regions with uneven point cloud density.To address this,we propose Hierarchical Shape Pruning for 3D Sparse Convolution(HSP-S),which dynamically eliminates redundant kernel stripes through layer-adaptive thresholding.Unlike static soft pruning methods,HSP-S maintains trainable sparsity patterns by progressively adjusting pruning thresholds during optimization,enlarging original parameter search space while removing redundant operations.Extensive experiments validate effectiveness of HSP-S acrossmajor autonomous driving benchmarks.On KITTI’s 3D object detection task,our method reduces 93.47%redundant kernel computations whilemaintaining comparable accuracy(1.56%mAP drop).Remarkably,on themore complexNuScenes benchmark,HSP-S achieves simultaneous computation reduction(21.94%sparsity)and accuracy gains(1.02%mAP(mean Average Precision)and 0.47%NDS(nuScenes detection score)improvement),demonstrating its scalability to diverse perception scenarios.This work establishes the first learnable shape pruning framework that simultaneously enhances computational efficiency and preserves detection accuracy in 3D perception systems. 展开更多
关键词 Shape pruning model compressing 3D sparse convolution
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A Novel Reduced Error Pruning Tree Forest with Time-Based Missing Data Imputation(REPTF-TMDI)for Traffic Flow Prediction
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作者 Yunus Dogan Goksu Tuysuzoglu +4 位作者 Elife Ozturk Kiyak Bita Ghasemkhani Kokten Ulas Birant Semih Utku Derya Birant 《Computer Modeling in Engineering & Sciences》 2025年第8期1677-1715,共39页
Accurate traffic flow prediction(TFP)is vital for efficient and sustainable transportation management and the development of intelligent traffic systems.However,missing data in real-world traffic datasets poses a sign... Accurate traffic flow prediction(TFP)is vital for efficient and sustainable transportation management and the development of intelligent traffic systems.However,missing data in real-world traffic datasets poses a significant challenge to maintaining prediction precision.This study introduces REPTF-TMDI,a novel method that combines a Reduced Error Pruning Tree Forest(REPTree Forest)with a newly proposed Time-based Missing Data Imputation(TMDI)approach.The REP Tree Forest,an ensemble learning approach,is tailored for time-related traffic data to enhance predictive accuracy and support the evolution of sustainable urbanmobility solutions.Meanwhile,the TMDI approach exploits temporal patterns to estimate missing values reliably whenever empty fields are encountered.The proposed method was evaluated using hourly traffic flow data from a major U.S.roadway spanning 2012-2018,incorporating temporal features(e.g.,hour,day,month,year,weekday),holiday indicator,and weather conditions(temperature,rain,snow,and cloud coverage).Experimental results demonstrated that the REPTF-TMDI method outperformed conventional imputation techniques across various missing data ratios by achieving an average 11.76%improvement in terms of correlation coefficient(R).Furthermore,REPTree Forest achieved improvements of 68.62%in RMSE and 70.52%in MAE compared to existing state-of-the-art models.These findings highlight the method’s ability to significantly boost traffic flow prediction accuracy,even in the presence of missing data,thereby contributing to the broader objectives of sustainable urban transportation systems. 展开更多
关键词 Machine learning traffic flow prediction missing data imputation reduced error pruning tree(REPTree) sustainable transportation systems traffic management artificial intelligence
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关于VRML中物体间碰撞检测的研究 被引量:9
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作者 白伟冬 周之平 +1 位作者 张飒兵 吴介一 《计算机应用研究》 CSCD 北大核心 2004年第6期128-130,133,共4页
碰撞检测对于虚拟制造中的很多应用有着非常重要的意义 ,但是VRML只对碰撞检测提供了有限的支持。提出了一种碰撞检测系统来扩展VRML的功能 ,系统采用了K DOP算法对两个物体进行碰撞检测 。
关键词 碰撞检测 VRML 虚拟制造 K-DOP SWEEP and PRUNE
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一种更具拓扑稳定性的ISOMAP算法 被引量:20
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作者 邵超 黄厚宽 赵连伟 《软件学报》 EI CSCD 北大核心 2007年第4期869-877,共9页
ISOMAP算法能否被成功运用,很大程度上依赖于邻域大小的选取是否合适.然而,如何有效地选取合适的邻域大小,目前还是一个尚未解决的难题.根据“短路”边会途经相对的低密度区域这一特点,能够有效删除邻域图中可能存在的“短路”边,提出了... ISOMAP算法能否被成功运用,很大程度上依赖于邻域大小的选取是否合适.然而,如何有效地选取合适的邻域大小,目前还是一个尚未解决的难题.根据“短路”边会途经相对的低密度区域这一特点,能够有效删除邻域图中可能存在的“短路”边,提出了P-ISOMAP(pruned-ISOMAP)算法,这极大地削弱了ISOMAP算法对邻域大小的依赖程度,从而使其更具拓扑稳定性.由于避免了邻域大小难以有效选取的问题,P-ISOMAP算法能够更容易地对数据进行可视化.实验结果很好地验证了该算法的有效性. 展开更多
关键词 ISOMAP P—ISOMAP(pruned—ISOMAP) 邻域大小 拓扑稳定性 残差 核密度估计 局部密度
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原空间中最小二乘支持向量机的新算法 被引量:3
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作者 赵永平 孙健国 《系统工程与电子技术》 EI CSCD 北大核心 2009年第1期142-145,237,共5页
为了解决原空间中最小二乘支持向量机的解缺乏稀疏性的缺点,提出了Pruning法、MFCV法和IMFCV法并对BDFS法进行了修改和运用。对一个不含有奇异点的系统而言,Pruning法、BDFS法和MFCV法在一定程度上都能实现原空间中最小二乘支持向量机... 为了解决原空间中最小二乘支持向量机的解缺乏稀疏性的缺点,提出了Pruning法、MFCV法和IMFCV法并对BDFS法进行了修改和运用。对一个不含有奇异点的系统而言,Pruning法、BDFS法和MFCV法在一定程度上都能实现原空间中最小二乘支持向量机解的稀疏性。BDFS法无论是训练时间还是预测时间都比Pruning法短;和MFCV法比起来,虽然BDFS法的训练时间短,但比MFCV的预测时间长。对一个含有奇异点的系统而言,Pruning法几乎失去了效用;虽然BDFS和MFCV法的训练时间都比IMFCV法的训练时间短,但IMFCV法能成功抑制奇异点从而缩短预测时间。 展开更多
关键词 最小二乘支持向量机 PRUNING BDFS MFCV
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LncRNA PCA3在甲基丙烯酸环氧丙酯诱导16HBE恶性转化细胞中的表达及意义 被引量:2
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作者 刘红梅 王全凯 +2 位作者 谢广云 温亚男 许建宁 《癌变·畸变·突变》 CAS CSCD 2016年第3期185-189,共5页
目的:探讨长链非编码RNA PCA3(LncRNA PCA3)在甲基丙烯酸环氧丙酯(GMA)诱导的16HBE恶性转化细胞中的表达水平及意义。方法:收获经8μg/mL GMA诱导的第30代16HBE恶性转化细胞及同代龄DMSO溶剂对照组细胞,应用高通量LncRNA芯片比较两组样... 目的:探讨长链非编码RNA PCA3(LncRNA PCA3)在甲基丙烯酸环氧丙酯(GMA)诱导的16HBE恶性转化细胞中的表达水平及意义。方法:收获经8μg/mL GMA诱导的第30代16HBE恶性转化细胞及同代龄DMSO溶剂对照组细胞,应用高通量LncRNA芯片比较两组样本表达谱的差异,通过差异倍数、邻近编码基因信息分析等策略初步筛选出16HBE恶性转化细胞中LncRNA PCA3及其最可能的相关蛋白编码基因PRUNE2,采用实时荧光定量PCR(qPCR)和全基因组表达谱芯片分析LncRNA PCA3和PRUNE2的表达量,并与同代龄DMSO对照组细胞比较。结果:LncRNA芯片结果显示,与同代龄DMSO组相比,GMA诱导的16HBE恶性转化细胞中LncRNA PCA3上调7.17倍,PRUNE2下调2.54倍;qPCR结果显示,与同代龄DMSO组[(1.36±0.44)×10^(-5)]相比,GMA诱导的恶性转化细胞[(2.67±0.63)×10^(-5)]中LncRNA PCA3表达上调(P<0.05);全基因组表达谱芯片显示,16HBE恶性转化细胞的PRUNE2表达量(10.95)较DMSO组(19.46)明显下调,与LncRNA芯片结果一致。结论:LncRNA PCA3可作为GMA诱导的16HBE恶性转化细胞中相关特异分子标志之一。 展开更多
关键词 甲基丙烯酸环氧丙酯 人支气管上皮细胞 Lnc RNA PCA3 PRUNE2
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WEKA中的Id3决策树算法 被引量:7
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作者 李四海 张忠文 《长春大学学报》 2011年第2期67-69,共3页
ID3算法是决策树学习归纳和数据挖掘中的核心方法。本文对ID3算法及其在WEKA中的实现进行了阐述,给出了使用剪枝阈值对决策树进行先剪枝的方法,最后通过实例对该方法的有效性进行了验证。
关键词 决策树 ID3 WEKA pruning—threshold
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