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Using a Vertical-Stream Variational Auto-Encoder to Generate Segment-Based Images and Its Biological Plausibility for Modelling the Visual Pathways

机译:使用垂直流变分自动编码器生成基于片段的图像及其对视觉通路建模的生物学可行性

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摘要

Human beings have a strong capability to identify objects in different viewpoints. Unlike computer vision that requires sufficient training samples in various scales and rotations, biological visual systems can efficiently recognize objects in diverse spatial states. To achieve this objective, images are processed into a segment-based representation and then a vertical stream variational auto-encoder (VSVAE) is utilized to generate images based on the preprocessed segments in this study. The novel structure of the two vertical streams can be also considered as a computational model for the interaction between the ventral pathway and the dorsal pathway in the visual cortex. The reconstructive capability of the VSVAE is testified by using a series of geometric information sets to enhance the segment-based representation. By visualizing the learnt features in the hidden layers of VSVAE, the biological plausibility of the model is discussed. In addition, the proposed methodology is able to facilitate the classification accuracy, especially when the images are severely transformed.
机译:人类具有识别不同观点的物体的强大能力。与计算机视觉需要各种规模和旋转度的足够训练样本不同,生物视觉系统可以有效地识别处于不同空间状态的物体。为了达到这个目的,将图像处理成基于片段的表示,然后在此研究中,使用垂直流变化自动编码器(VSVAE)基于预处理的片段生成图像。两个垂直流的新颖结构也可以被视为视觉皮层中腹侧通路和背侧通路之间相互作用的计算模型。通过使用一系列几何信息集来增强基于段的表示,证明了VSVAE的重构能力。通过可视化VSVAE的隐藏层中学习到的特征,讨论了该模型的生物学合理性。另外,所提出的方法能够促进分类精度,特别是当图像被严重地变换时。

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