Graduate School of Frontiers Biosciences, Osaka University, Osaka, Japan.
Japan Society for Promotion of Science, Tokyo, Japan.
PLoS One. 2020 Jun 26;15(6):e0235128. doi: 10.1371/journal.pone.0235128. eCollection 2020.
Segmentation of a natural scene into objects and background is a fundamental but challenging task for recognizing objects. Investigating intermediate-level visual cortical areas with a focus on local information is a crucial step towards understanding the formation of the cortical representations of figure and ground. We examined the activity of a population of macaque V4 neurons during the presentation of natural image patches and their respective variations. The natural image patches were optimized to exclude the influence of global context but included various characteristics of local stimulus. Around one fourth of the patch-responsive V4 neurons exhibited significant modulation of firing activity that was dependent on the positional relation between the figural region of the stimulus and the classical receptive field of the neuron. However, the individual neurons showed low consistency in figure-ground modulation across a variety of image patches (55-62%), indicating that individual neurons were capable of correctly signaling figure and ground only for a limited number of stimuli. We examined whether integration of the activity of multiple neurons enabled higher consistency across a variety of natural patches by training a support vector machine to classify figure and ground of the stimuli from the population firing activity. The integration of the activity of a few tens of neurons yielded discrimination accuracy much greater than that of single neurons (up to 85%), suggesting a crucial role of population coding for figure-ground discrimination in natural images.
将自然场景分割为物体和背景是识别物体的基本但具有挑战性的任务。关注局部信息的中间视觉皮层区域的研究是理解图形和背景的皮层表示形成的关键步骤。我们研究了猕猴 V4 神经元群体在呈现自然图像斑块及其各自变化时的活动。这些自然图像斑块经过优化,以排除全局上下文的影响,但包含了局部刺激的各种特征。大约四分之一的对斑块有反应的 V4 神经元表现出显著的放电活动调制,这种调制依赖于刺激的图形区域与神经元的经典感受野之间的位置关系。然而,单个神经元在各种图像斑块之间的图形-背景调制一致性较低(55-62%),这表明单个神经元只能对有限数量的刺激正确地发出图形和背景信号。我们通过训练支持向量机来从群体放电活动中对刺激的图形和背景进行分类,以检验多个神经元的活动整合是否能提高对各种自然斑块的一致性。几十神经元的活动整合产生的辨别准确性远高于单个神经元(高达 85%),这表明在自然图像中,群体编码对于图形-背景辨别起着至关重要的作用。