期刊文献+
共找到4篇文章
< 1 >
每页显示 20 50 100
Deep Global Multiple-Scale and Local Patches Attention Dual-Branch Network for Pose-Invariant Facial Expression Recognition
1
作者 Chaoji Liu Xingqiao Liu +1 位作者 Chong Chen Kang Zhou 《Computer Modeling in Engineering & Sciences》 SCIE EI 2024年第4期405-440,共36页
Pose-invariant facial expression recognition(FER)is an active but challenging research topic in computer vision.Especially with the involvement of diverse observation angles,FER makes the training parameter models inc... Pose-invariant facial expression recognition(FER)is an active but challenging research topic in computer vision.Especially with the involvement of diverse observation angles,FER makes the training parameter models inconsistent from one view to another.This study develops a deep global multiple-scale and local patches attention(GMS-LPA)dual-branch network for pose-invariant FER to weaken the influence of pose variation and selfocclusion on recognition accuracy.In this research,the designed GMS-LPA network contains four main parts,i.e.,the feature extraction module,the global multiple-scale(GMS)module,the local patches attention(LPA)module,and the model-level fusion model.The feature extraction module is designed to extract and normalize texture information to the same size.The GMS model can extract deep global features with different receptive fields,releasing the sensitivity of deeper convolution layers to pose-variant and self-occlusion.The LPA module is built to force the network to focus on local salient features,which can lower the effect of pose variation and self-occlusion on recognition results.Subsequently,the extracted features are fused with a model-level strategy to improve recognition accuracy.Extensive experimentswere conducted on four public databases,and the recognition results demonstrated the feasibility and validity of the proposed methods. 展开更多
关键词 Pose-invariant FER global multiple-scale(GMS) local patches attention(LPA) model-level fusion
在线阅读 下载PDF
Two Kinds Equal Frequency Circuits to Achieve Locally Resonant Band Gap of a Circular Plate Attached Alternately by Piezoelectric Unimorphs
2
作者 Longxiang Dai Hongping Hu +1 位作者 Shan Jiang Xuedong Chen 《Acta Mechanica Solida Sinica》 SCIE EI CSCD 2016年第5期502-513,共12页
A circular thin plate is proposed for vibration attenuation,which is attached alternately by annular piezoelectric unimorphs with resonant shunt circuits.Two kinds of equal frequency resonant shunt circuits are design... A circular thin plate is proposed for vibration attenuation,which is attached alternately by annular piezoelectric unimorphs with resonant shunt circuits.Two kinds of equal frequency resonant shunt circuits are designed to achieve an integrated locally resonant(LR)band gap(BG) with a much smaller transmission factor:(1) the structure is arrayed periodically while the resonant shunt circuits are aperiodic;(2) the resonant shunt circuits are periodic while the structure is aperiodic.The transmission factor curve is calculated,which is validated by the finite element method.Dependences of the LR BG performance upon the geometric and electric parameters are also analyzed. 展开更多
关键词 resonant piezoelectric periodically shunt circuits circular validated locally patches connected
原文传递
Localized micronutrient patches induce lateral root foraging and chemotropism in Nicotiana attenuata
3
作者 Abigail P. Ferrieri Ricardo A. R. Machado +3 位作者 Carla C. M. Arce Danny Kessler lan T. Baldwin Matthias Erb 《Journal of Integrative Plant Biology》 SCIE CAS CSCD 2017年第10期759-771,共13页
Nutrients are distributed unevenly in the soil.Phenotypic plasticity in root growth and proliferation may enable plants to cope with this variation and effectively forage for essential nutrients. However, how micronut... Nutrients are distributed unevenly in the soil.Phenotypic plasticity in root growth and proliferation may enable plants to cope with this variation and effectively forage for essential nutrients. However, how micronutrients shape root architecture of plants in their natural environments is poorly understood. We used a combination of field and laboratory-based assays to determine the capacity of Nicotiana attenuata to direct root growth towards localized nutrient patches in its native environment. Plants growing in nature displayed a particular root phenotype consisting of a single primary root and a few long, shallow lateral roots. Analysis of bulk soil surrounding the lateral roots revealed a strong positive correlation between lateral root placement and micronutrient gradients, including copper, iron and zinc. In laboratory assays, the application of localized micronutrient salts close to lateral root tips led to roots bending in the direction of copper and iron. This form of chemotropism was absent in ethylene and jasmonic acid deficient lines,suggesting that it is controlled in part by these two hormones. This work demonstrates that directed root growth underlies foraging behavior, and suggests that chemotropism and micronutrient-guided root placement are important factors that shape root architecture in nature. 展开更多
关键词 Localized micronutrient patches induce lateral root foraging and chemotropism in Nicotiana attenuata
原文传递
Integrating hybrid priors for face photo-sketch synthesis
4
作者 Kun Cheng Mingrui Zhu +1 位作者 Nannan Wang Xinbo Gao 《Journal of Information and Intelligence》 2025年第5期401-418,共18页
Benefiting from the advancement of deep learning techniques,face photo-sketch synthesis has witnessed significant progress in recent years.Cutting-edge methods typically treat this task as an image-to-image translatio... Benefiting from the advancement of deep learning techniques,face photo-sketch synthesis has witnessed significant progress in recent years.Cutting-edge methods typically treat this task as an image-to-image translation problem and train a conditional generative model to learn the mapping between two domains.However,purely parametric deep learning models often struggle to capture instance-level details due to limited training samples and tend to focus on domain-level mapping.Moreover,sketch-to-photo synthesis is more challenging than photo-to-sketch synthesis and holds greater significance in the realm of public security,but it has not been well-studied in existing methods.To address these challenges,we introduce an innovative framework that synergistically integrates parametric and non-parametric approaches,infusing facial generative priors and instancelevel prior knowledge from the target domain to enrich texture detail synthesis.Specifically,our framework employs a semantic-aware network to facilitate coarse cross-domain reconstruction,thereby capturing domain-level information.Moreover,through efficient neural patch matching between the input image and multiple reference(training)samples,we can harness instance-level prior knowledge as a detailed texture representation to enhance detail fidelity.For the sketch-to-photo synthesis task,we further propose a local patch correspondence mechanism that improves the rationality of matching through local constraint.To further enhance the generation of realistic and detailed facial features,we incorporate a pre-trained StyleGAN as the decoder,leveraging its extensive facial generative priors.Additionally,we introduce the relaxed Earth Movers Distance(rEMD)loss to improve the style consistency between the generated results and the target domain.Extensive experiments show that our method achieves state-of-the-art performance on both quantitative and qualitative evaluations. 展开更多
关键词 Face photo-sketch synthesis Hybrid priors Local patch correspondence
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部