Evolutionary multi-view face tracking on pixel replaced image in video sequence

J. Sato, T. Akashi
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Abstract

Nowadays, many computer vision techniques are applied to practical applications, such as surveillance and facial recognition systems. Some of such applications focus on information extraction from the human beings. However, people may feel psychological stress about recording their personal information, such as a face, behavior, and cloth. Therefore, privacy protection of the images and videos is necessary. Specifically, the detection and tracking methods should be used on the privacy protected images. For this purpose, there are some easy methods, such as blurring and pixelating, and they are often used in news programs etc. Because such methods just average pixel values, no important feature for the detection and tracking is left. Hence, the preprocessed images are unuseful. In order to solve this problem, we have proposed shuffle filter and a multi-view face tracking method with a genetic algorithm (GA). The filter protects the privacy by changing pixel locations, and the color information can be preserved. Since the color information is left, the tracking can be achieved by a basic template matching with histogram. Moreover, by using GA instead of sliding window when the subject in the image is searched, it can search more efficiently. However, the tracking accuracy is still low and the preprocessing time is large. Therefore, improving them is the purpose in this research. In the experiment, the improved method is compared with our previous work, CAMSHIFT, an online learning method, and a face detector. The results indicate that the accuracy of the proposed method is higher than the others.
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视频序列中像素替换图像的进化多视图人脸跟踪
如今,许多计算机视觉技术被应用于实际应用,如监控和面部识别系统。其中一些应用侧重于从人类身上提取信息。然而,人们可能会对记录他们的个人信息感到心理压力,比如脸、行为和衣服。因此,对图像和视频进行隐私保护是必要的。具体来说,应该对隐私保护图像使用检测和跟踪方法。为了达到这个目的,有一些简单的方法,如模糊和像素化,它们经常用于新闻节目等。由于这些方法只是平均像素值,没有留下检测和跟踪的重要特征。因此,预处理图像是无用的。为了解决这一问题,我们提出了洗牌滤波和一种基于遗传算法的多视图人脸跟踪方法。过滤器通过改变像素的位置来保护隐私,并且可以保留颜色信息。由于颜色信息被保留,因此可以通过与直方图匹配的基本模板来实现跟踪。此外,在搜索图像中的主题时,采用遗传算法代替滑动窗口,可以提高搜索效率。但是,该方法的跟踪精度仍然较低,预处理时间较大。因此,改进它们是本研究的目的。在实验中,将改进后的方法与我们之前的工作、CAMSHIFT在线学习方法和人脸检测器进行了比较。结果表明,该方法的精度高于其他方法。
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