首页> 美国卫生研究院文献>The Journal of Neuroscience >There Is a U in Clutter: Evidence for Robust Sparse Codes Underlying Clutter Tolerance in Human Vision
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There Is a U in Clutter: Evidence for Robust Sparse Codes Underlying Clutter Tolerance in Human Vision

机译:杂波中有一个 U:人类视觉中杂波容差背后的强大稀疏代码的证据

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摘要

The ability to recognize objects in clutter is crucial for human vision, yet the underlying neural computations remain poorly understood. Previous single-unit electrophysiology recordings in inferotemporal cortex in monkeys and fMRI studies of object-selective cortex in humans have shown that the responses to pairs of objects can sometimes be well described as a weighted average of the responses to the constituent objects. Yet, from a computational standpoint, it is not clear how the challenge of object recognition in clutter can be solved if downstream areas must disentangle the identity of an unknown number of individual objects from the confounded average neuronal responses. An alternative idea is that recognition is based on a subpopulation of neurons that are robust to clutter, i.e., that do not show response averaging, but rather robust object-selective responses in the presence of clutter. Here we show that simulations using the HMAX model of object recognition in cortex can fit the aforementioned single-unit and fMRI data, showing that the averaging-like responses can be understood as the result of responses of object-selective neurons to suboptimal stimuli. Moreover, the model shows how object recognition can be achieved by a sparse readout of neurons whose selectivity is robust to clutter. Finally, the model provides a novel prediction about human object recognition performance, namely, that target recognition ability should show a U-shaped dependency on the similarity of simultaneously presented clutter objects. This prediction is confirmed experimentally, supporting a simple, unifying model of how the brain performs object recognition in clutter.>SIGNIFICANCE STATEMENT The neural mechanisms underlying object recognition in cluttered scenes (i.e., containing more than one object) remain poorly understood. Studies have suggested that neural responses to multiple objects correspond to an average of the responses to the constituent objects. Yet, it is unclear how the identities of an unknown number of objects could be disentangled from a confounded average response. Here, we use a popular computational biological vision model to show that averaging-like responses can result from responses of clutter-tolerant neurons to suboptimal stimuli. The model also provides a novel prediction, that human detection ability should show a U-shaped dependency on target–clutter similarity, which is confirmed experimentally, supporting a simple, unifying account of how the brain performs object recognition in clutter.
机译:识别杂物的能力对于人类的视觉至关重要,但是对底层的神经计算仍然知之甚少。先前猴子下颞叶皮层的单个单位电生理记录和人类对对象选择性皮层的fMRI研究表明,有时可以很好地描述对对象对的响应,作为对组成对象的响应的加权平均值。然而,从计算的角度来看,如果下游区域必须从混杂的平均神经元反应中解开未知数目的单个对象的身份,那么如何解决杂波中的对象识别挑战尚不清楚。另一种想法是,识别基于对杂波鲁棒的神经元亚群,即不显示平均响应,而是在杂波存在时显示出强大的对象选择性响应。在这里,我们展示了使用HMAX模型在皮层中进行对象识别的仿真可以拟合上述的单个单元和fMRI数据,表明平均似的响应可以理解为对象选择性神经元对次优刺激做出响应的结果。而且,该模型显示了如何通过稀疏读出选择性强于混乱的神经元来实现目标识别。最后,该模型提供了有关人类物体识别性能的新颖预测,即目标识别能力应对同时呈现的杂波物体的相似性表现出U形依赖性。该预测通过实验得到证实,支持大脑在杂波中如何执行对象识别的简单统一模型。>意义声明杂波场景(即,包含多个对象)中的对象识别所依据的神经机制仍然存在知之甚少。研究表明,对多个物体的神经反应对应于对组成物体的平均反应。然而,目前尚不清楚如何将未知数量的物体的身份与混杂的平均响应区分开。在这里,我们使用一种流行的计算生物视觉模型来表明,类似杂物的反应可以由耐杂波的神经元对次佳刺激的反应引起。该模型还提供了一种新颖的预测,即人类的检测能力应表现出对目标-杂波相似性的U形依赖性,这已通过实验得到证实,支持了大脑如何在杂波中进行物体识别的简单统一的说明。

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