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Learning view invariant recognition with partially occluded objects

机译:学习部分遮挡的对象的视图不变性

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摘要

This paper investigates how a neural network model of the ventral visual pathway, VisNet, can form separate view invariant representations of a number of objects seen rotating together. In particular, in the current work one of the rotating objects is always partially occluded by the other objects present during training. A key challenge for the model is to link together the separate partial views of the occluded object into a single view invariant representation of that object. We show how this can be achieved by Continuous Transformation (CT) learning, which relies on spatial similarity between successive views of each object. After training, the network had developed cells in the output layer which had learned to respond invariantly to particular objects over most or all views, with each cell responding to only one object. All objects, including the partially occluded object, were individually represented by a unique subset of output cells.
机译:本文研究了腹侧视觉通路的神经网络模型VisNet如何形成旋转在一起的许多对象的独立视图不变表示。特别地,在当前工作中,旋转物体中的一个总是总是被训练期间存在的其他物体部分地阻塞。该模型的主要挑战是将被遮挡对象的单独局部视图链接到该对象的单个视图不变表示中。我们展示了如何通过连续变换(CT)学习来实现这一目标,该学习依赖于每个对象的连续视图之间的空间相似性。训练后,网络在输出层开发了单元格,该单元格已学会在大多数或所有视图上对特定对象进行不变的响应,而每个单元格仅对一个对象做出响应。所有对象(包括部分遮挡的对象)都由输出单元格的唯一子集单独表示。

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