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Fusing bottom-up and top-down pathways in neural networks for visual object recognition

机译:在神经网络中融合自下而上和自上而下的路径以进行视觉对象识别

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In this paper, an artificial neural network model is built up with two pathways: bottom-up sensory-driven pathway and top-down expectation-driven pathway, which are fused to train the neural network for visual object recognition. During the supervised learning process, the bottom-up pathway generates hypotheses as network outputs. Then target label will be applied to update the bottom-up connections. On the other hand, the hypotheses generated by the bottom-up pathway will produce expectations on the sensory input through the top-down pathway. The expectations will be constrained by the real data from the sensory input which can be used to update the top-down connections accordingly. This two-pathway based neural network can also be applied to semi-supervised learning with both labeled and unlabeled data, where the network is able to generate hypotheses and corresponding expectations. Experiments on visual object recognition suggest that the proposed neural network model is promising to recover the object for the cases with missing data in sensory inputs.
机译:本文建立了一个人工神经网络模型,该模型具有两个途径:自下而上的感官驱动途径和自上而下的期望驱动途径,两者融合在一起训练神经网络进行视觉目标识别。在监督学习过程中,自下而上的途径会生成假设作为网络输出。然后将应用目标标签来更新自下而上的连接。另一方面,由下而上的途径产生的假设将对通过自上而下的途径的感觉输入产生期望。预期将受到来自感官输入的实际数据的约束,这些数据可用于相应地更新自上而下的连接。这种基于两条路径的神经网络也可以应用于带有标记和未标记数据的半监督学习,其中该网络能够生成假设和相应的期望值。视觉目标识别的实验表明,对于感觉输入中缺少数据的情况,所提出的神经网络模型有望恢复目标。

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