基于深度神经网络的鲁棒目标识别的类别特定感知学习。

IF 3.6 2区 生物学 Q1 BIOCHEMICAL RESEARCH METHODS
PLoS Computational Biology Pub Date : 2025-09-23 eCollection Date: 2025-09-01 DOI:10.1371/journal.pcbi.1013529
Hojin Jang, Frank Tong
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引用次数: 0

摘要

现实环境中的物体识别需要处理相当大的模糊性,然而人类视觉系统对噪声观看条件具有高度鲁棒性。在这里,我们研究了感知学习在人类和深度神经网络(dnn)稳健性习得中的作用。具体来说,我们试图确定高斯噪声下的物体图像的感知训练,从某些有生命或无生命的类别中提取,是否会导致人类鲁棒性的特定类别或一般类别的改进。此外,dnn是否可以提供人类感知学习的可行模型?在训练前后,我们评估了使用新物体图像进行准确识别所需的噪声阈值。人类观察者在训练前对噪声相当稳健,但在仅使用几百个噪声对象样本进行训练后,表现出额外的类别特定改进。相比之下,标准dnn最初缺乏鲁棒性,然后在使用相同的噪声示例进行训练后显示出一般类别和特定类别的学习。我们进一步评估了用适度噪声图像预训练的DNN模型,以匹配人类预训练的准确性。值得注意的是,这些模型只显示出特定类别的改进,与人类观察者所展示的整体学习模式相匹配。对深度神经网络响应的分层分析显示,类别一般学习效应出现在较低的层,而类别特定的改进出现在较高的层。我们的研究结果支持了这样一种观点,即对嘈杂视觉条件的鲁棒性是通过学习产生的,人类可能从日常接触现实世界的噪音中获得鲁棒性,人类和dnn表现出的其他特定类别的改进涉及更高水平的视觉表征的学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Category-specific perceptual learning of robust object recognition modelled using deep neural networks.

Object recognition in real-world environments requires dealing with considerable ambiguity, yet the human visual system is highly robust to noisy viewing conditions. Here, we investigated the role of perceptual learning in the acquisition of robustness in both humans and deep neural networks (DNNs). Specifically, we sought to determine whether perceptual training with object images in Gaussian noise, drawn from certain animate or inanimate categories, would lead to category-specific or category-general improvements in human robustness. Moreover, might DNNs provide viable models of human perceptual learning? Both before and after training, we evaluated the noise threshold required for accurate recognition using novel object images. Human observers were quite robust to noise before training, but showed additional category-specific improvement after training with only a few hundred noisy object examples. In comparison, standard DNNs initially lacked robustness, then showed both category-general and category-specific learning after training with the same noisy examples. We further evaluated DNN models that were pre-trained with moderately noisy images to match human pre-training accuracy. Notably, these models only showed category-specific improvement, matching the overall pattern of learning exhibited by human observers. A layer-wise analysis of DNN responses revealed that category-general learning effects emerged in the lower layers, whereas category-specific improvements emerged in the higher layers. Our findings provide support for the notion that robustness to noisy visual conditions arises through learning, humans likely acquire robustness from everyday encounters with real-world noise, and additional category-specific improvements exhibited by humans and DNNs involve learning at higher levels of visual representation.

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来源期刊
PLoS Computational Biology
PLoS Computational Biology BIOCHEMICAL RESEARCH METHODS-MATHEMATICAL & COMPUTATIONAL BIOLOGY
CiteScore
7.10
自引率
4.70%
发文量
820
审稿时长
2.5 months
期刊介绍: PLOS Computational Biology features works of exceptional significance that further our understanding of living systems at all scales—from molecules and cells, to patient populations and ecosystems—through the application of computational methods. Readers include life and computational scientists, who can take the important findings presented here to the next level of discovery. Research articles must be declared as belonging to a relevant section. More information about the sections can be found in the submission guidelines. Research articles should model aspects of biological systems, demonstrate both methodological and scientific novelty, and provide profound new biological insights. Generally, reliability and significance of biological discovery through computation should be validated and enriched by experimental studies. Inclusion of experimental validation is not required for publication, but should be referenced where possible. Inclusion of experimental validation of a modest biological discovery through computation does not render a manuscript suitable for PLOS Computational Biology. Research articles specifically designated as Methods papers should describe outstanding methods of exceptional importance that have been shown, or have the promise to provide new biological insights. The method must already be widely adopted, or have the promise of wide adoption by a broad community of users. Enhancements to existing published methods will only be considered if those enhancements bring exceptional new capabilities.
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