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Recurrent Connections Aid Occluded Object Recognition by Discounting Occluders

机译:经常性连接通过打折遮挡物帮助遮挡物识别

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Recurrent connections in the visual cortex are thought to aid object recognition when part of the stimulus is occluded. Here we investigate if and how recurrent connections in artificial neural networks similarly aid object recognition. We systematically test and compare architectures comprised of bottom-up (B), lateral (L) and top-down (T) connections. Performance is evaluated on a novel stereoscopic occluded object recognition dataset. The task consists of recognizing one target digit occluded by multiple occluder digits in a pseudo-3D environment. We find that recurrent models perform significantly better than their feedforward counterparts, which were matched in parametric complexity. Furthermore, we analyze how the network's representation of the stimuli evolves over time due to recurrent connections. We show that the recurrent connections tend to move the network's representation of an occluded digit towards its un-occluded version. Our results suggest that both the brain and artificial neural networks can exploit recurrent connectivity to aid occluded object recognition.
机译:当部分刺激被遮挡时,视觉皮层中的经常性连接被认为有助于物体识别。在这里,我们研究了人工神经网络中的循环连接是否以及如何类似地帮助对象识别。我们系统地测试和比较由下至上(B),横向(L)和自上而下(T)连接组成的体系结构。在新颖的立体遮挡对象识别数据集上评估性能。该任务包括识别在伪3D环境中被多个遮挡物数字遮挡的一个目标数字。我们发现,递归模型的性能明显优于其前馈模型,后者在参数复杂度方面是匹配的。此外,我们分析了由于重复连接而导致的网络刺激表示随时间变化的情况。我们表明,循环连接倾向于将网络中被遮挡数字的表示移向其未被遮挡的版本。我们的结果表明,大脑和人工神经网络都可以利用循环连接来帮助遮挡物体识别。

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