The authors present a novel face tracking approach where optical flow information is incorporated into a modified version of the Viola Jones detection algorithm. In the original algorithm, detection is static, as information from previous frames is not considered. In addition, candidate windows have to pass all stages of the classification cascade, otherwise they are discarded as containing no face. In contrast, the proposed tracker preserves information about the number of classification stages passed by each window. Such information is used to build a likelihood map, which represents the probability of having a face located at that position. Tracking capabilities are provided by extrapolating the position of the likelihood map to the next frame by optical flow computation. The proposed algorithm works in real time on a standard laptop. The system is verified on the Boston Head Tracking Database, showing that the proposed algorithm outperforms the standard Viola Jones detector in terms of detection rate and stability of the output bounding box, as well as including the capability to deal with occlusions. The authors also evaluate two recently published face detectors based on convolutional networks and deformable part models with their algorithm showing a comparable accuracy at a fraction of the computation time.
翻译:作者们提出了一个新的面貌跟踪方法,将光学流信息纳入Viola Jones探测算法的修改版本中。在原始算法中,探测是静态的,因为没有考虑前一个框架的信息。此外,候选窗口必须通过分类级联的所有阶段,否则它们会被丢弃为无面孔。相反,拟议的跟踪器保存了每个窗口通过分类阶段的数量的信息。这种信息用于绘制一个可能性地图,表明将脸部定位在该位置的概率。跟踪能力是通过光学流计算将概率地图的位置外推至下一个框架提供的。提议的算法在标准膝上实时运行。在波士顿头跟踪数据库上对该系统进行了核实,显示拟议的算法在检测率和产出捆绑框稳定性方面超过了标准Viola Jones探测器,并包括了处理闭塞的能力。作者们还评估了最近出版的两份基于革命网络和变异部分模型的面探测器,其算法显示在计算时的相当精确度。