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GaitGAN: Invariant Gait Feature Extraction Using Generative Adversarial Networks

机译:GaitGAN:使用生成对抗网络进行不变步态特征提取

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The performance of gait recognition can be adversely affected by many sources of variation such as view angle, clothing, presence of and type of bag, posture, and occlusion, among others. In order to extract invariant gait features, we proposed a method named as GaitGAN which is based on generative adversarial networks (GAN). In the proposed method, a GAN model is taken as a regressor to generate invariant gait images that is side view images with normal clothing and without carrying bags. A unique advantage of this approach is that the view angle and other variations are not needed before generating invariant gait images. The most important computational challenge, however, is to address how to retain useful identity information when generating the invariant gait images. To this end, our approach differs from the traditional GAN which has only one discriminator in that GaitGAN contains two discriminators. One is a fake/real discriminator which can make the generated gait images to be realistic. Another one is an identification discriminator which ensures that the the generated gait images contain human identification information. Experimental results show that GaitGAN can achieve state-of-the-art performance. To the best of our knowledge this is the first gait recognition method based on GAN with encouraging results. Nevertheless, we have identified several research directions to further improve GaitGAN.
机译:步态识别的性能可能受到多种变化来源的不利影响,例如视角,衣服,袋子的存在和类型,姿势和遮挡等。为了提取不变的步态特征,我们提出了一种基于生成对抗网络(GAN)的名为GaitGAN的方法。在提出的方法中,将GAN模型用作回归器以生成不变步态图像,该步态图像是具有正常衣物且没有携带袋子的侧视图图像。这种方法的独特优势是在生成不变步态图像之前不需要视角和其他变化。然而,最重要的计算挑战是解决在生成不变步态图像时如何保留有用的身份信息。为此,我们的方法不同于传统的GAN,后者只有一个鉴别符,因为GaitGAN包含两个鉴别符。一种是假的/真实的鉴别器,它可以使生成的步态图像逼真。另一个是识别鉴别器,其确保所生成的步态图像包含人类识别信息。实验结果表明,GaitGAN可以达到最先进的性能。据我们所知,这是第一种基于GAN的步态识别方法,其结果令人鼓舞。尽管如此,我们已经确定了一些进一步改善GaitGAN的研究方向。

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