Geisler Wilson S, Najemnik Jiri, Ing Almon D
Center for Perceptual Systems and Department of Psychology, University of Texas at Austin, Austin, TX 78712, USA.
J Vis. 2009 Dec 16;9(13):17.1-16. doi: 10.1167/9.13.17.
Determining the features of natural stimuli that are most useful for specific natural tasks is critical for understanding perceptual systems. A new approach is described that involves finding the optimal encoder for the natural task of interest, given a relatively small population of noisy "neurons" between the encoder and decoder. The optimal encoder, which necessarily specifies the most useful features, is found by maximizing accuracy in the natural task, where the decoder is the Bayesian ideal observer operating on the population responses. The approach is illustrated for a patch identification task, where the goal is to identify patches of natural image, and for a foreground identification task, where the goal is to identify which side of a natural surface boundary belongs to the foreground object. The optimal features (receptive fields) are intuitive and perform well in the two tasks. The approach also provides insight into general principles of neural encoding and decoding.
确定对特定自然任务最有用的自然刺激特征对于理解感知系统至关重要。本文描述了一种新方法,该方法涉及在编码器和解码器之间存在相对少量有噪声的“神经元”的情况下,为感兴趣的自然任务找到最优编码器。最优编码器必然指定了最有用的特征,它是通过在自然任务中最大化准确率来找到的,其中解码器是对群体反应进行操作的贝叶斯理想观察者。该方法在补丁识别任务(目标是识别自然图像的补丁)和前景识别任务(目标是识别自然表面边界的哪一侧属于前景对象)中得到了说明。最优特征(感受野)直观且在这两个任务中表现良好。该方法还为神经编码和解码的一般原则提供了见解。