实时环境下基于时间相关和概率预测的人脸检测框架

P. Mayank, S. Mukhopadhyay
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引用次数: 4

摘要

传统上,大多数人脸检测应用都采用Viola Jones提出的目标检测算法(利用Haar-like feature、Integral image和AdaBoost算法)。本文利用视频运动估计与连续目标检测的相似性,对Viola Jones算法在实时环境中的应用进行了改进。利用实时输入连续帧之间的时间相关性,提出了各种改进方法,以提高人脸检测的鲁棒性和计算复杂度。该方法的重点是在概率预测的基础上缩小人脸检测的搜索面积。此外,最小面大小的近似值提高了性能。改进的人脸检测框架(FDF)应用于两种场景,即来自公共数据库的视频序列和来自低分辨率摄像机的实时输入,在这两种情况下都得到了改进的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Temporal correlation and probabilistic prediction based face detection framework in real time environment
Conventionally, the object detection algorithm proposed by Viola Jones (using Haar-like features, Integral image and AdaBoost algorithm) is implemented in majority of the face detection applications. In this article, an improvement to the application of Viola Jones algorithm in real time environment is presented by exploiting the analogy between video motion estimation and continuous object detection. Using the temporal correlation between successive frames of a real time input, various modifications improving the robustness and computational complexity of face detection are proposed. The proposed method focuses on reducing the search area for face detection on the basis of probabilistic prediction. In addition, approximation of minimum face size renders an improved performance. The modified Face Detection Framework (FDF) is applied in two scenarios, canned video sequences from public databases and real time inputs from a low resolution camera, yielding improved results in both the cases.
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