基于生成对抗网络的多视角图像协同关注方法

Qi-Xian Huang, Shu-Pei Shi, Guo-Shiang Lin, D. Shen, Hung-Min Sun
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摘要

在本文中,我们使用深度卷积生成对抗网络(dcgan)方法生成更多具有多个视图的图像,以增加我们的数据集多样性。我们使用3d模型的不同视图来训练DCGAN,在最左和最右的随机向量之间进行插值,这意味着它可以生成最左到最右的图像。在生成许多多视图图像后,我们结合基于CNN的共关注地图生成器模块来寻找相同类别但不同视图服装的共同特征。将学习到的生成器应用于所有图像,得到相应的共同关注图。该方法可以很好地应用于不同类型的服装类上的多视图对象。
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A Co-Attention Method Based on Generative Adversarial Networks for Multi-view Images
In this paper, we use Deep Convolutional Generative Adversarial Networks (DCGANs) method to generate more images with multiple views to increase our dataset diversity. We use 3D-model different views for training DCGAN to make interpolation between the leftest and rightest random vectors, which means it can generate leftest to rightest images. After producing many of multi-view images, we combine with CNN based modules called co-attention map generator to look for common features of the same class but in different views clothing. By applying the learned generator to all images, the corresponding co-attention maps are obtained. we can fluently apply the proposed method can function well for multi-view objects on different types of clothing classes.
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