Interest in automatic people re-identification systems has significantly grown in recent years, mainly for developing surveillance and smart shops software. Due to the variability in person posture, different lighting conditions, and occluded scenarios, together with the poor quality of the images obtained by different cameras, it is currently an unsolved problem. In machine learning-based computer vision applications with reduced data sets, one possibility to improve the performance of re-identification system is through the augmentation of the set of images or videos available for training the neural models. Currently, one of the most robust ways to generate synthetic information for data augmentation, whether it is video, images or text, are the generative adversarial networks. This article reviews the most relevant recent approaches to improve the performance of person re-identification models through data augmentation, using generative adversarial networks. We focus on three categories of data augmentation approaches: style transfer, pose transfer, and random generation.
翻译:近年来,人们对自动重新识别系统的兴趣明显增加,主要用于开发监视和智能商店软件。由于个人姿势的变化、不同的照明条件和隐蔽的情景,加上不同照相机获得的图像质量差,目前这是一个尚未解决的问题。在基于机器的基于学习的计算机视觉应用中,数据集减少,改进再识别系统的一个可能性是通过扩大用于培训神经模型的图像或视频集来改进再识别系统的性能。目前,生成用于数据增强的合成信息(无论是视频、图像还是文字)的最有力的方法之一是基因对抗网络。本文章回顾了最近通过增强数据、使用基因对抗网络来改进个人再识别模型性能的最相关方法。我们侧重于三类数据增强方法:风格传输、配置传输和随机生成。