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基于Z-Score模型的永辉超市财务风险分析
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作者 张志花 于悦 《老字号品牌营销》 2026年第1期165-167,共3页
本文基于零售行业特有的生鲜产品易损耗性、消费需求波动性及行业竞争激烈等特点,聚焦代表性企业永辉超市展开研究。近年来,受宏观经济下行与线上零售持续分流的影响,传统超市业态面临严峻挑战,企业财务风险日益凸显。本文运用Z-score模... 本文基于零售行业特有的生鲜产品易损耗性、消费需求波动性及行业竞争激烈等特点,聚焦代表性企业永辉超市展开研究。近年来,受宏观经济下行与线上零售持续分流的影响,传统超市业态面临严峻挑战,企业财务风险日益凸显。本文运用Z-score模型,对永辉超市2020—2024年的财务数据进行分析,评估其财务风险状况。通过计算Z值并判断其风险区间,识别出企业面临的主要财务风险点,进而从强化营运资本管理、优化资本结构和深化数字化转型等维度提出具有针对性的风险控制策略。本文的研究旨在为永辉超市的稳健经营提供决策参考,并为零售行业企业的财务风险管理提供实践借鉴。 展开更多
关键词 财务风险 z-score模型 永辉超市
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Effects of feature selection and normalization on network intrusion detection 被引量:3
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作者 Mubarak Albarka Umar Zhanfang Chen +1 位作者 Khaled Shuaib Yan Liu 《Data Science and Management》 2025年第1期23-39,共17页
The rapid rise of cyberattacks and the gradual failure of traditional defense systems and approaches led to using artificial intelligence(AI)techniques(such as machine learning(ML)and deep learning(DL))to build more e... The rapid rise of cyberattacks and the gradual failure of traditional defense systems and approaches led to using artificial intelligence(AI)techniques(such as machine learning(ML)and deep learning(DL))to build more efficient and reliable intrusion detection systems(IDSs).However,the advent of larger IDS datasets has negatively impacted the performance and computational complexity of AI-based IDSs.Many researchers used data preprocessing techniques such as feature selection and normalization to overcome such issues.While most of these researchers reported the success of these preprocessing techniques on a shallow level,very few studies have been performed on their effects on a wider scale.Furthermore,the performance of an IDS model is subject to not only the utilized preprocessing techniques but also the dataset and the ML/DL algorithm used,which most of the existing studies give little emphasis on.Thus,this study provides an in-depth analysis of feature selection and normalization effects on IDS models built using three IDS datasets:NSL-KDD,UNSW-NB15,and CSE–CIC–IDS2018,and various AI algorithms.A wrapper-based approach,which tends to give superior performance,and min-max normalization methods were used for feature selection and normalization,respectively.Numerous IDS models were implemented using the full and feature-selected copies of the datasets with and without normalization.The models were evaluated using popular evaluation metrics in IDS modeling,intra-and inter-model comparisons were performed between models and with state-of-the-art works.Random forest(RF)models performed better on NSL-KDD and UNSW-NB15 datasets with accuracies of 99.86%and 96.01%,respectively,whereas artificial neural network(ANN)achieved the best accuracy of 95.43%on the CSE–CIC–IDS2018 dataset.The RF models also achieved an excellent performance compared to recent works.The results show that normalization and feature selection positively affect IDS modeling.Furthermore,while feature selection benefits simpler algorithms(such as RF),normalization is more useful for complex algorithms like ANNs and deep neural networks(DNNs),and algorithms such as Naive Bayes are unsuitable for IDS modeling.The study also found that the UNSW-NB15 and CSE–CIC–IDS2018 datasets are more complex and more suitable for building and evaluating modern-day IDS than the NSL-KDD dataset.Our findings suggest that prioritizing robust algorithms like RF,alongside complex models such as ANN and DNN,can significantly enhance IDS performance.These insights provide valuable guidance for managers to develop more effective security measures by focusing on high detection rates and low false alert rates. 展开更多
关键词 CYBERSECURITY Intrusion detection system Machine learning Deep learning Feature selection normalization
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Low-Complexity Hardware Architecture for Batch Normalization of CNN Training Accelerator
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作者 Go-Eun Woo Sang-Bo Park +2 位作者 Gi-Tae Park Muhammad Junaid Hyung-Won Kim 《Computers, Materials & Continua》 2025年第8期3241-3257,共17页
On-device Artificial Intelligence(AI)accelerators capable of not only inference but also training neural network models are in increasing demand in the industrial AI field,where frequent retraining is crucial due to f... On-device Artificial Intelligence(AI)accelerators capable of not only inference but also training neural network models are in increasing demand in the industrial AI field,where frequent retraining is crucial due to frequent production changes.Batch normalization(BN)is fundamental to training convolutional neural networks(CNNs),but its implementation in compact accelerator chips remains challenging due to computational complexity,particularly in calculating statistical parameters and gradients across mini-batches.Existing accelerator architectures either compromise the training accuracy of CNNs through approximations or require substantial computational resources,limiting their practical deployment.We present a hardware-optimized BN accelerator that maintains training accuracy while significantly reducing computational overhead through three novel techniques:(1)resourcesharing for efficient resource utilization across forward and backward passes,(2)interleaved buffering for reduced dynamic random-access memory(DRAM)access latencies,and(3)zero-skipping for minimal gradient computation.Implemented on a VCU118 Field Programmable Gate Array(FPGA)on 100 MHz and validated using You Only Look Once version 2-tiny(YOLOv2-tiny)on the PASCALVisualObjectClasses(VOC)dataset,our normalization accelerator achieves a 72%reduction in processing time and 83%lower power consumption compared to a 2.4 GHz Intel Central Processing Unit(CPU)software normalization implementation,while maintaining accuracy(0.51%mean Average Precision(mAP)drop at floating-point 32 bits(FP32),1.35%at brain floating-point 16 bits(bfloat16)).When integrated into a neural processing unit(NPU),the design demonstrates 63%and 97%performance improvements over AMD CPU and Reduced Instruction Set Computing-V(RISC-V)implementations,respectively.These results confirm that our proposed BN hardware design enables efficient,high-accuracy,and power-saving on-device training for modern CNNs.Our results demonstrate that efficient hardware implementation of standard batch normalization is achievable without sacrificing accuracy,enabling practical on-device CNN training with significantly reduced computational and power requirements. 展开更多
关键词 Convolutional neural network normalization batch normalization deep learning TRAINING HARDWARE
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Analytic approximation of periodic orbits with renormalization group
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作者 Haoyi Huang Tianyi Wang +1 位作者 Pengfei Guo Yueheng Lan 《Communications in Theoretical Physics》 2025年第8期11-24,共14页
Renormalization group analysis has been proposed to eliminate secular terms in perturbation solutions of differential equations and thus expand the domain of their validity.Here we extend the method to treat periodic ... Renormalization group analysis has been proposed to eliminate secular terms in perturbation solutions of differential equations and thus expand the domain of their validity.Here we extend the method to treat periodic orbits or limit cycles.Interesting normal forms could be derived through a generalization of the concept'resonance',which offers nontrivial analytic approximations.Compared with traditional techniques such as multi-scale methods,the current scheme proceeds in a very straightforward and simple way,delivering not only the period and the amplitude but also the transient path to limit cycles.The method is demonstrated with several examples including the Duffing oscillator,van der Pol equation and Lorenz equation.The obtained solutions match well with numerical results and with those derived by traditional analytic methods. 展开更多
关键词 nonlinear dynamics cycles renormalization group analytic solution normal forms
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Switchable Normalization Based Faster RCNN for MRI Brain Tumor Segmentation
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作者 Rachana Poongodan Dayanand Lal Narayan +2 位作者 Deepika Gadakatte Lokeshwarappa Hirald Dwaraka Praveena Dae-Ki Kang 《Computers, Materials & Continua》 2025年第9期5751-5772,共22页
In recent decades,brain tumors have emerged as a serious neurological disorder that often leads to death.Hence,Brain Tumor Segmentation(BTS)is significant to enable the visualization,classification,and delineation of ... In recent decades,brain tumors have emerged as a serious neurological disorder that often leads to death.Hence,Brain Tumor Segmentation(BTS)is significant to enable the visualization,classification,and delineation of tumor regions in Magnetic Resonance Imaging(MRI).However,BTS remains a challenging task because of noise,non-uniform object texture,diverse image content and clustered objects.To address these challenges,a novel model is implemented in this research.The key objective of this research is to improve segmentation accuracy and generalization in BTS by incorporating Switchable Normalization into Faster R-CNN,which effectively captures the fine-grained tumor features to enhance segmentation precision.MRI images are initially acquired from three online datasets:Dataset 1—Brain Tumor Segmentation(BraTS)2018,Dataset 2—BraTS 2019,and Dataset 3—BraTS 2020.Subsequently,the Switchable Normalization-based Faster Regions with Convolutional Neural Networks(SNFRC)model is proposed for improved BTS in MRI images.In the proposed model,Switchable Normalization is integrated into the conventional architecture,enhancing generalization capability and reducing overfitting to unseen image data,which is essential due to the typically limited size of available datasets.The network depth is increased to obtain discriminative semantic features that improve segmentation performance.Specifically,Switchable Normalization captures the diverse feature representations from the brain images.The Faster R-CNN model develops end-to-end training and effective regional proposal generation,with an enhanced training stability using Switchable Normalization,to perform an effective segmentation in MRI images.From the experimental results,the proposed model attains segmentation accuracies of 99.41%,98.12%,and 96.71%on Datasets 1,2,and 3,respectively,outperforming conventional deep learning models used for BTS. 展开更多
关键词 Brain tumor segmentation computer-aided system deep learning models magnetic resonance imaging medical images switchable normalization
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基于Z-score模型的B新能源汽车企业财务状况分析
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作者 王恬恬 《产业创新研究》 2026年第1期174-176,共3页
随着国家陆续推出一系列新能源汽车购置补贴、免征购置税以及充电设施建设等扶持政策,新能源汽车行业受到了汽车企业与消费者前所未有的关注。在此背景下,部分传统汽车企业也纷纷涉足新能源汽车领域。市场规模的持续扩大,使得企业面临... 随着国家陆续推出一系列新能源汽车购置补贴、免征购置税以及充电设施建设等扶持政策,新能源汽车行业受到了汽车企业与消费者前所未有的关注。在此背景下,部分传统汽车企业也纷纷涉足新能源汽车领域。市场规模的持续扩大,使得企业面临着更加激烈的市场竞争环境。本文依托2019—2023年的数据,分析B新能源汽车企业在盈利能力、偿债能力、运营效率及成长能力方面的表现,引入Z-score模型,对B企业的财务状况进行了全面深入的分析,旨在揭示其潜在风险并提出有效的风险管理策略,希望能对该企业有所帮助。 展开更多
关键词 z-score模型 财务风险 财务预警
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基于Z-score模型的启迪环境财务风险管理研究
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作者 张莉 《老字号品牌营销》 2026年第4期172-174,共3页
在绿水青山就是金山银山的大背景下,环境综合治理行业作为高投入、高收益并存的行业,其发展前期基础相对薄弱,面临较多的财务风险。因此,本文选取启迪环境作为研究对象,以公司财务数据为基础,从筹资、投资、营运等角度分析计算相关财务... 在绿水青山就是金山银山的大背景下,环境综合治理行业作为高投入、高收益并存的行业,其发展前期基础相对薄弱,面临较多的财务风险。因此,本文选取启迪环境作为研究对象,以公司财务数据为基础,从筹资、投资、营运等角度分析计算相关财务指标并进行初步评价,进而运用Z-score模型对存在的财务风险进行进一步分析,以期为财务风险管理提出应对策略。 展开更多
关键词 z-score模型 财务风险 资本结构
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Z-Score模型视角下美邦服装公司财务风险评估与动态防范机制研究
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作者 姜礼鑫 《西部皮革》 2026年第4期2-4,共3页
当前服装行业市场竞争日趋激烈,企业普遍面临较大的库存管理压力,且时尚迭代速度快,进而面临显著的财务风险,对其进行管控是实现可持续发展的关键所在。文章以美邦服装为研究对象,依据其2020年至2024年公开的财务数据,运用Z-score模型... 当前服装行业市场竞争日趋激烈,企业普遍面临较大的库存管理压力,且时尚迭代速度快,进而面临显著的财务风险,对其进行管控是实现可持续发展的关键所在。文章以美邦服装为研究对象,依据其2020年至2024年公开的财务数据,运用Z-score模型从多个维度对财务风险进行评估并分析成因。结果表明,该公司在此期间Z值均处于破产风险区间,财务风险较高,成因覆盖经营模式滞后、资本结构不合理以及营运资金管理效率低等方面。2021年后经营状况有所改善,Z值回升,但风险尚未从根本上缓解。基于此,研究建议构建全流程动态防范机制,旨在为美邦及同类企业提升财务风险管理水平提供参考。 展开更多
关键词 z-score模型 美邦服装 财务风险 风险评估 动态防范机制
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基于修正Z-score和Prophet模型的GNSS滑坡监测数据预测方法
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作者 李达 《科学技术创新》 2026年第7期71-74,共4页
针对GNSS滑坡监测数据中粗差严重影响预测精度的问题,提出基于修正Z-score和Prophet模型的集成预测方法。采用修正Z-score算法检测粗差,利用中位数和绝对中位差提升鲁棒性;经Savitzky-Golay滤波后应用Prophet模型预测。实测数据表明:粗... 针对GNSS滑坡监测数据中粗差严重影响预测精度的问题,提出基于修正Z-score和Prophet模型的集成预测方法。采用修正Z-score算法检测粗差,利用中位数和绝对中位差提升鲁棒性;经Savitzky-Golay滤波后应用Prophet模型预测。实测数据表明:粗差滤波使3天预测RMSE从2.34 mm降至1.78 mm,精度提升23.9%;5天预测RMSE从2.89 mm降至2.31 mm,精度提升20.1%。方法计算高效、参数稳定,为滑坡预警提供了可靠技术支撑。 展开更多
关键词 滑坡监测 修正z-score Prophet模型 GNSS时间序列预测
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Biopsychosocial health status of Indonesian student nurses on the new normal Jakarta Indonesia
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作者 Eka Rokhmiati Wahyu Purnamasari Arby James Abonalla +3 位作者 Marcos Ochoa Mary Ann Nery Mark Santos Esteve Adrian Estiva 《Frontiers of Nursing》 2026年第1期115-120,共6页
Nursing education in Indonesia experienced a number of changes during the new normal.The biopsychosocial health status reveals how students can complete their studies well at nursing school in the new normal.A quantit... Nursing education in Indonesia experienced a number of changes during the new normal.The biopsychosocial health status reveals how students can complete their studies well at nursing school in the new normal.A quantitative,descriptive correlational study sampled 368 student nurses from2 universities.This study used a biopsychosocial questionnaire,which included biological,physiological,and social dimensions.In this study,there was no significant demographic student nurse relationship with the biological,psychological,and social dimensions of health,at P-value 0.05(Age P=0.70,P=0.27,P=0.93)sex(P=1,P=0.919,P=0.5),as well as grade level(P=0.9,P=0.37,P=0.64).Student nurses were dynamic,such as process input,resulting in coping adaptation and the ability to care for themselves.There was a relationship between both universities with a psychological dimension and a P-value of 0.049.In terms of Generation Z technology,both universities played a role.Lifestyle influences can lead to intense feelings of isolation and loneliness in some teens,including self-negativity,fear of missing out on information,and shame about not meeting appropriate standards for social media.The influence of an unhealthy lifestyle impacts stress and anxiety.The student nurses assigned considered themselves to be“healthy”in terms of their biopsychosocial health status.Student nurses continued to develop in their biopsychosocial health by utilizing different coping strategies to adapt and adjust to their environment in their school of nursing. 展开更多
关键词 biopsychosocial health new normal nursing school student nurses biological psychological social
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Local Characterizations of Results on the Normal Index of Subgroups in Finite Groups
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作者 Yubo LV Yangming LI Xiaoxia DONG 《Journal of Mathematical Research with Applications》 2026年第1期33-39,共7页
Let G be a finite group and H a subgroup of G.The normal index of H in G is defined as the order of K/H_(G),where K is a normal supplement of H in G such that|K|is minimal and H_(G)≤K■G.Let p be a prime which divide... Let G be a finite group and H a subgroup of G.The normal index of H in G is defined as the order of K/H_(G),where K is a normal supplement of H in G such that|K|is minimal and H_(G)≤K■G.Let p be a prime which divides the order of a group G.In this paper,some characterizations of G being p-solvable or p-supersolvable were obtained by analyzing the normal index of certain subgroups of G.These results can be viewed as local version of recent results in the literature. 展开更多
关键词 p-solvable group p-supersolvable group normal index maximal subgroup 2-maximal subgroup
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Well-posedness and exponential stability of a dynamic frictionless contact problem with normal compliance and infinite memory
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作者 Imane Ouakil Benyattou Benabderrahmane Yamna Boukhatem 《Applied Mathematics(A Journal of Chinese Universities)》 2026年第1期99-119,共21页
A model for dynamic frictionless contact between a viscoelastic body and foundation is considered.The viscoelastic constitutive law is assumed to be nonlinear and the contact is modelled with the normal compliance con... A model for dynamic frictionless contact between a viscoelastic body and foundation is considered.The viscoelastic constitutive law is assumed to be nonlinear and the contact is modelled with the normal compliance condition.We obtain the well-posedness using nonlinear semigroup theory arguments.Moreover,the exponential stability result of the solution is shown by using the energy method to produce a suitable Lyapunov function. 展开更多
关键词 dynamic process viscoelastic body normal compliance nonlinear semigroup theory exponential stability
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Effects of joint geometric configurations on cyclic shear behavior of intermittent joints under constant normal stiffness conditions
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作者 Bin Wang Yujing Jiang +1 位作者 Qiangyong Zhang Hongbin Chen 《Deep Underground Science and Engineering》 2026年第1期233-249,共17页
Intermittent joints are common in rock masses and are subjected to cyclic shear loads from seismic events,environmental factors,and human activities.In this study,we conducted cyclic shear tests to investigate the eff... Intermittent joints are common in rock masses and are subjected to cyclic shear loads from seismic events,environmental factors,and human activities.In this study,we conducted cyclic shear tests to investigate the effect of joint geometry(persistence,overlap,and spacing)on the cyclic shear behavior of intermittent joints under constant normal stiffness conditions.Our results revealed step‐path failure surfaces comprising tensile and shear failure surfaces.Shear failure surface controlled the degradation of shear properties,with shear strength decreasing progressively with cycles,ranging from 74.07%to 97.94%.Intermittent joints exhibited significant compressibility,with dilation predominant in early cycles and compression in later ones.Shear strength and dilation were more sensitive to joint persistence and spacing than overlap.Friction coefficients showed nonmonotonic variations with cycle number.High persistence,moderate overlap,and small spacing were identified as the most destabilizing combination.These findings offer valuable insights for stability assessment and deformation characterization in deep rock engineering. 展开更多
关键词 constant normal stiffness cyclic shear load intermittent joints joint configuration shear behavior shear strength
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Intermediate crack initiation during liquid core reduction of regular slabs:ERLS-based 3D simulation with calibrated normalized Cockcroft–Latham criterion
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作者 Junlong Ju Zhida Zhang +1 位作者 Cheng Ji Miaoyong Zhu 《International Journal of Minerals,Metallurgy and Materials》 2026年第3期861-873,共13页
Liquid core reduction(LCR)technology,originally developed for continuous thin-slab casting,allows space for a submerged entry nozzle in a mold while improving production efficiency.Recent experimental attempts explore... Liquid core reduction(LCR)technology,originally developed for continuous thin-slab casting,allows space for a submerged entry nozzle in a mold while improving production efficiency.Recent experimental attempts explore the implementation of LCR in regular slab casting processes.However,regular slabs(2–3 times thicker than thin slabs)face critical challenges in terms of excessive deformation and stress concentration under external forces,which induce intermediate cracks and thus hinder successful LCR adoption in regular slab production.This study evaluates the feasibility of LCR for producing regular slabs and identifies optimal reduction parameters to prevent crack initiation.A three-dimensional thermal–mechanical coupled model is proposed using the finite element method(FEM),integrated with the equivalent replacement liquid steel(ERLS)method and the normalized Cockcroft–Latham damage model,to achieve quantitative prediction of intermediate crack risk during the LCR process.The ERLS model simulates the extrusion flow and expulsion behavior of the liquid core,and its accuracy is validated against actual production measurements.To identify the critical damage value leading to intermediate crack initiation,this study conducts a consistency analysis between high-temperature tensile tests and FEM-based simulations using damage models.Based on this value,crack prediction is performed for Q355 slabs with cross-sectional dimensions of 170 mm×1450 mm.Using the prediction results,an optimal reduction scheme is determined,wherein the second segment accounts for 50%of the total reduction,the third segment for 32.5%,and the fourth segment for 17.5%,with the theoretical value of maximum reduction being 34 mm.These results provide actionable guidelines for the potential implementation of LCR in regular slab-casting systems. 展开更多
关键词 continuous slab casting liquid core reduction intermediate cracking thermo-mechanical behavior finite element method normalized Cockcroft-Latham damage criterion
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基于TZ Normalization规整的话者确认阈值选取 被引量:3
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作者 刘明辉 陈继旭 +1 位作者 戴蓓蒨 李辉 《数据采集与处理》 CSCD 北大核心 2005年第3期311-317,共7页
针对说话人确认中,各目标话者模型输出评分分布不一致而导致系统确认阈值设置的困难,本文采取了通过评分规整确定系统最小检测代价函数(DCF)确认阈值的方法。在分析了已有的两种评分规整方法Z norm a l-ization和T norm a lization的基... 针对说话人确认中,各目标话者模型输出评分分布不一致而导致系统确认阈值设置的困难,本文采取了通过评分规整确定系统最小检测代价函数(DCF)确认阈值的方法。在分析了已有的两种评分规整方法Z norm a l-ization和T norm a lization的基础上,提出了一种结合两者优点的组合规整方法——TZ norm a lization,并据此给出了一种阈值动态修正方法,有效地提高了系统的性能和阈值选取的鲁棒性。对历年的N IST(手机电话语音)评测语料库进行了实验,表明了该方法的有效性。 展开更多
关键词 说话人确认 评分规整 TZ normalization 最小DCF阈值
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基于CNN和Group Normalization的校园垃圾图像分类 被引量:11
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作者 王玉 王梦佳 张伟红 《吉林大学学报(信息科学版)》 CAS 2020年第6期744-750,共7页
为解决大学校园的垃圾回收分类问题,提出了一种基于卷积神经网络和归一化技术的垃圾图像分类方法,不需要对输入的图像进行复杂的处理,网络模型即可根据算法提取图像特征,通过加入群组归一化(Group Normalization)和网络模型各层之间的协... 为解决大学校园的垃圾回收分类问题,提出了一种基于卷积神经网络和归一化技术的垃圾图像分类方法,不需要对输入的图像进行复杂的处理,网络模型即可根据算法提取图像特征,通过加入群组归一化(Group Normalization)和网络模型各层之间的协作,克服传统分类算法的缺点,实现对垃圾图像的分类。实验表明,该识别方法具有较高准确率,可以较好识别不可回收及可回收垃圾。 展开更多
关键词 卷积神经网络 群组归一化 图像分类 深度学习
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Auto-normalization algorithm for robotic precision drilling system in aircraft component assembly 被引量:37
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作者 Tian Wei Zhou Weixue +2 位作者 Zhou Wei Liao Wenhe Zeng Yuanfan 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2013年第2期495-500,共6页
A novel approach is proposed to detect the normal vector to product surface in real time for the robotic precision drilling system in aircraft component assembly, and the auto-normalization algorithm is presented base... A novel approach is proposed to detect the normal vector to product surface in real time for the robotic precision drilling system in aircraft component assembly, and the auto-normalization algorithm is presented based on the detection system. Firstly, the deviation between the normal vector and the spindle axis is measured by the four laser displacement sensors installed at the head of the multi-function end effector. Then, the robot target attitude is inversely solved according to the auto-normalization algorithm. Finally, adjust the robot to the target attitude via pitch and yaw rotations about the tool center point and the spindle axis is corrected in line with the normal vector simultaneously. To test and verify the auto-normalization algorithm, an experimental platform is established in which the laser tracker is introduced for accurate measurement. The results show that the deviations between the corrected spindle axis and the normal vector are all reduced to less than 0.5°, with the mean value 0.32°. It is demonstrated the detection method and the autonormalization algorithm are feasible and reliable. 展开更多
关键词 Aircraft assembly Auto-normalization Industrial robots normal vector detection Robotic precision drilling
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Evaluation of Two Absolute Radiometric Normalization Algorithms for Pre-processing of Landsat Imagery 被引量:13
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作者 徐涵秋 《Journal of China University of Geosciences》 SCIE CSCD 2006年第2期146-150,157,共6页
In order to evaluate radiometric normalization techniques, two image normalization algorithms for absolute radiometric correction of Landsat imagery were quantitatively compared in this paper, which are the Illuminati... In order to evaluate radiometric normalization techniques, two image normalization algorithms for absolute radiometric correction of Landsat imagery were quantitatively compared in this paper, which are the Illumination Correction Model proposed by Markham and Irish and the Illumination and Atmospheric Correction Model developed by the Remote Sensing and GIS Laboratory of the Utah State University. Relative noise, correlation coefficient and slope value were used as the criteria for the evaluation and comparison, which were derived from pseudo-invarlant features identified from multitemporal Landsat image pairs of Xiamen (厦门) and Fuzhou (福州) areas, both located in the eastern Fujian (福建) Province of China. Compared with the unnormalized image, the radiometric differences between the normalized multitemporal images were significantly reduced when the seasons of multitemporal images were different. However, there was no significant difference between the normalized and unnorrealized images with a similar seasonal condition. Furthermore, the correction results of two algorithms are similar when the images are relatively clear with a uniform atmospheric condition. Therefore, the radiometric normalization procedures should be carried out if the multitemporal images have a significant seasonal difference. 展开更多
关键词 LANDSAT radiometrie correction data normalization pseudo-invariant features image processing.
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基于Moment Normalization和M序列的二值水印算法
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作者 刘娟梅 李乔良 +1 位作者 唐子惠 杨琦 《计算机技术与发展》 2008年第5期153-155,167,共4页
针对因特网上数字图像的版权保护、认证和完整性等问题,基于DCT变换、image moment normalization和m序列,提出了一种二值水印嵌入算法,实现了二值图像的嵌入和提取。根据m序列的伪随机性和抗干扰性能,使水印具有良好的隐蔽性和稳健性;... 针对因特网上数字图像的版权保护、认证和完整性等问题,基于DCT变换、image moment normalization和m序列,提出了一种二值水印嵌入算法,实现了二值图像的嵌入和提取。根据m序列的伪随机性和抗干扰性能,使水印具有良好的隐蔽性和稳健性;使用了moment normalization能抵制各种几何攻击。实验表明该算法具有很好的鲁棒性、实用性和可操作性。 展开更多
关键词 数字水印 DTC MOMENT normalization M序列
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Improved normalization method for ductile fracture toughness determination based on dimensionless load separation principle 被引量:12
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作者 Chen Bao Lixun Cai +2 位作者 Kaikai Shi Chen Dan Yao Yao 《Acta Mechanica Solida Sinica》 SCIE EI CSCD 2015年第2期168-181,共14页
This study successfully deals with the inhomogeneous dimension problem of load separation assumption, which is the theoretical basis of the normalization method. According to the dimensionless load separation principl... This study successfully deals with the inhomogeneous dimension problem of load separation assumption, which is the theoretical basis of the normalization method. According to the dimensionless load separation principle, the normalization method has been improved by intro- ducing a forcible blunting correction. With the improved normalization method, the J-resistance curves of five different metallic materials of CT and SEB specimens are estimated. The forcible blunting correction of initial crack size plays an important role in the J-resistance curve estima- tion, which is closely related to the strain hardening level of material. The higher level of strain hardening leads to a greater difference in JQ determined by different slopes of the blunting line. If the blunting line coefficient recommended by ASTM E1820-11 is used in the improved nor- realization method, it will lead to greater fracture resistance than that processed by the blunting line coefficient recommended by ISO 12135-2002. Therefore, the influence of the blunting line on the determination of JQ must be taken into full account in the fracture toughness assessment of metallic materials. 展开更多
关键词 dimensionless load separation improved normalization method dimension inho-mogeneous J-resistance curve forcible blunting correction
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