Department of Computer Science, University of Miami, Coral Gables, FL, USA.
Department of Electrical and Computer Engineering, University of Kentucky, Lexington, KY, USA.
J Vis. 2022 Feb 1;22(2):19. doi: 10.1167/jov.22.2.19.
Sparse coding has been incorporated in models of the visual cortex for its computational advantages and connection to biology. But how the level of sparsity contributes to performance on visual tasks is not well understood. In this work, sparse coding has been integrated into an existing hierarchical V2 model (Hosoya & Hyvärinen, 2015), but replacing its independent component analysis (ICA) with an explicit sparse coding in which the degree of sparsity can be controlled. After training, the sparse coding basis functions with a higher degree of sparsity resembled qualitatively different structures, such as curves and corners. The contributions of the models were assessed with image classification tasks, specifically tasks associated with mid-level vision including figure-ground classification, texture classification, and angle prediction between two line stimuli. In addition, the models were assessed in comparison with a texture sensitivity measure that has been reported in V2 (Freeman et al., 2013) and a deleted-region inference task. The results from the experiments show that although sparse coding performed worse than ICA at classifying images, only sparse coding was able to better match the texture sensitivity level of V2 and infer deleted image regions, both by increasing the degree of sparsity in sparse coding. Greater degrees of sparsity allowed for inference over larger deleted image regions. The mechanism that allows for this inference capability in sparse coding is described in this article.
稀疏编码因其计算优势和与生物学的联系,已被纳入视觉皮层模型中。但是,稀疏编码的水平如何影响视觉任务的表现还不是很清楚。在这项工作中,稀疏编码已经被整合到现有的分层 V2 模型(Hosoya 和 Hyvärinen,2015)中,但是用显式的稀疏编码替代了独立成分分析(ICA),其中可以控制稀疏编码的程度。经过训练,具有更高稀疏度的稀疏编码基函数在质量上呈现出不同的结构,例如曲线和拐角。使用图像分类任务评估了模型的贡献,特别是与中层视觉相关的任务,包括图形-背景分类、纹理分类和两条线刺激之间角度的预测。此外,还与 V2 中报告的纹理敏感度测量(Freeman 等人,2013)和删除区域推断任务进行了比较。实验结果表明,尽管稀疏编码在分类图像方面的性能不如 ICA,但只有稀疏编码能够通过增加稀疏编码的稀疏度来更好地匹配 V2 的纹理敏感度水平,并推断出删除的图像区域。更大的稀疏度允许对更大的删除图像区域进行推断。本文描述了允许稀疏编码具有这种推断能力的机制。