Department of Neuroscience, Baylor College of Medicine, Houston, Texas, USA.
Nat Neurosci. 2011 Jun;14(6):783-90. doi: 10.1038/nn.2814. Epub 2011 May 8.
The ability to search efficiently for a target in a cluttered environment is one of the most remarkable functions of the nervous system. This task is difficult under natural circumstances, as the reliability of sensory information can vary greatly across space and time and is typically a priori unknown to the observer. In contrast, visual-search experiments commonly use stimuli of equal and known reliability. In a target detection task, we randomly assigned high or low reliability to each item on a trial-by-trial basis. An optimal observer would weight the observations by their trial-to-trial reliability and combine them using a specific nonlinear integration rule. We found that humans were near-optimal, regardless of whether distractors were homogeneous or heterogeneous and whether reliability was manipulated through contrast or shape. We present a neural-network implementation of near-optimal visual search based on probabilistic population coding. The network matched human performance.
在杂乱环境中有效地搜索目标的能力是神经系统最显著的功能之一。在自然环境下,这项任务非常困难,因为感官信息的可靠性在空间和时间上会有很大的变化,而且通常是观察者事先不知道的。相比之下,视觉搜索实验通常使用可靠性相等且已知的刺激。在目标检测任务中,我们在每次试验中随机为每个项目分配高或低的可靠性。一个最优的观察者会根据试验的可靠性来加权观察结果,并使用特定的非线性积分规则对它们进行组合。我们发现,无论干扰项是同质的还是异质的,以及可靠性是通过对比度还是形状来操纵的,人类都接近最优。我们提出了一种基于概率群体编码的接近最优的视觉搜索的神经网络实现。该网络匹配了人类的表现。