Edgcomb Alex, Vahid Frank
Department of Computer Science and Engineering, University of California, Riverside, CA 92507, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2012;2012:252-5. doi: 10.1109/EMBC.2012.6345917.
A privacy-enhanced video obscures the appearance of a person in the video. We consider four privacy enhancements: blurring of the person, silhouetting of the person, covering the person with a graphical box, and covering the person with a graphical oval. We demonstrate that an automated video-based fall detection algorithm can be as accurate on privacy-enhanced video as on raw video. The algorithm operated on video from a stationary in-home camera, using a foreground-background segmentation algorithm to extract a minimum bounding rectangle (MBR) around the motion in the video, and using time series shapelet analysis on the height and width of the rectangle to detect falls. We report accuracy applying fall detection on 23 scenarios depicted as raw video and privacy-enhanced videos involving a sole actor portraying normal activities and various falls. We found that fall detection on privacy-enhanced video, except for the common approach of blurring of the person, was competitive with raw video, and in particular that the graphical oval privacy enhancement yielded the same accuracy as raw video, namely 0.91 sensitivity and 0.92 specificity.
隐私增强视频会模糊视频中人物的外貌。我们考虑了四种隐私增强方式:对人物进行模糊处理、勾勒人物轮廓、用图形框覆盖人物以及用图形椭圆覆盖人物。我们证明了基于视频的自动跌倒检测算法在隐私增强视频上的准确性与在原始视频上一样。该算法对来自固定家用摄像头的视频进行操作,使用前景-背景分割算法提取视频中运动周围的最小外接矩形(MBR),并对矩形的高度和宽度进行时间序列形状let分析以检测跌倒。我们报告了在23种场景下应用跌倒检测的准确性,这些场景被描绘为原始视频和隐私增强视频,涉及一名演员进行正常活动和各种跌倒的情况。我们发现,除了常见的人物模糊处理方法外,隐私增强视频上的跌倒检测与原始视频具有竞争力,特别是图形椭圆隐私增强方式产生的准确性与原始视频相同,即灵敏度为0.91,特异性为0.92。