Hung Chou P, Kreiman Gabriel, Poggio Tomaso, DiCarlo James J
McGovern Institute for Brain Research, Cambridge, MA 02139, USA.
Science. 2005 Nov 4;310(5749):863-6. doi: 10.1126/science.1117593.
Understanding the brain computations leading to object recognition requires quantitative characterization of the information represented in inferior temporal (IT) cortex. We used a biologically plausible, classifier-based readout technique to investigate the neural coding of selectivity and invariance at the IT population level. The activity of small neuronal populations (approximately 100 randomly selected cells) over very short time intervals (as small as 12.5 milliseconds) contained unexpectedly accurate and robust information about both object "identity" and "category." This information generalized over a range of object positions and scales, even for novel objects. Coarse information about position and scale could also be read out from the same population.
要理解导致物体识别的大脑计算过程,需要对颞下(IT)皮质中所表征的信息进行定量表征。我们使用了一种基于生物学合理性且基于分类器的读出技术,来研究IT群体水平上选择性和不变性的神经编码。在非常短的时间间隔(短至12.5毫秒)内,小神经元群体(约100个随机选择的细胞)的活动包含了关于物体“身份”和“类别”的意外准确且稳健的信息。即使对于新物体,该信息也能在一系列物体位置和尺度上进行泛化。关于位置和尺度的粗略信息也可以从同一群体中读出。