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Autori principali: Chen, Ping, Zhang, Xingpeng, Zhou, Chengtao, Fan, Dichao, Tu, Peng, Zhang, Le, Qian, Yanlin
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2311.18605
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author Chen, Ping
Zhang, Xingpeng
Zhou, Chengtao
Fan, Dichao
Tu, Peng
Zhang, Le
Qian, Yanlin
author_facet Chen, Ping
Zhang, Xingpeng
Zhou, Chengtao
Fan, Dichao
Tu, Peng
Zhang, Le
Qian, Yanlin
contents Convolution neural network is successful in pervasive vision tasks, including label distribution learning, which usually takes the form of learning an injection from the non-linear visual features to the well-defined labels. However, how the discrepancy between features is mapped to the label discrepancy is ambient, and its correctness is not guaranteed.To address these problems, we study the mathematical connection between feature and its label, presenting a general and simple framework for label distribution learning. We propose a so-called Triangular Distribution Transform (TDT) to build an injective function between feature and label, guaranteeing that any symmetric feature discrepancy linearly reflects the difference between labels. The proposed TDT can be used as a plug-in in mainstream backbone networks to address different label distribution learning tasks. Experiments on Facial Age Recognition, Illumination Chromaticity Estimation, and Aesthetics assessment show that TDT achieves on-par or better results than the prior arts.
format Preprint
id arxiv_https___arxiv_org_abs_2311_18605
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Learning Triangular Distribution in Visual World
Chen, Ping
Zhang, Xingpeng
Zhou, Chengtao
Fan, Dichao
Tu, Peng
Zhang, Le
Qian, Yanlin
Computer Vision and Pattern Recognition
Convolution neural network is successful in pervasive vision tasks, including label distribution learning, which usually takes the form of learning an injection from the non-linear visual features to the well-defined labels. However, how the discrepancy between features is mapped to the label discrepancy is ambient, and its correctness is not guaranteed.To address these problems, we study the mathematical connection between feature and its label, presenting a general and simple framework for label distribution learning. We propose a so-called Triangular Distribution Transform (TDT) to build an injective function between feature and label, guaranteeing that any symmetric feature discrepancy linearly reflects the difference between labels. The proposed TDT can be used as a plug-in in mainstream backbone networks to address different label distribution learning tasks. Experiments on Facial Age Recognition, Illumination Chromaticity Estimation, and Aesthetics assessment show that TDT achieves on-par or better results than the prior arts.
title Learning Triangular Distribution in Visual World
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2311.18605