An incremental learning method for face recognition under continuous video stream

J. Weng, C. Evans, Wey-Shiuan Hwang
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引用次数: 55

Abstract

The current technology in computer vision requires humans to collect images, store images, segment images for computers and train computer recognition systems using these images. It is unlikely that such a manual labor process can meet the demands of many challenging recognition tasks. Our goal is to enable machines to learn directly from sensory input streams while interacting with the environment including human teachers. We propose a new technique which incrementally derives discriminating features in the input space. Virtual labels are formed by clustering in the output space to extract discriminating features in the input space. We organize the resulting discriminating subspace in a coarse-to-fine fashion and store the information in a decision tree. Such an incremental hierarchical discriminating regression (IHDR) decision tree can be modeled by a hierarchical probability distribution model. We demonstrate the performance of the algorithm on the problem of face recognition using video sequences of 33889 frames in length from 143 different subjects. A correct recognition rate of 95.1% has been achieved.
连续视频流下人脸识别的增量学习方法
目前的计算机视觉技术需要人类为计算机收集图像、存储图像、分割图像并使用这些图像训练计算机识别系统。这种手工劳动过程不太可能满足许多具有挑战性的识别任务的要求。我们的目标是使机器能够直接从感官输入流中学习,同时与环境(包括人类教师)互动。我们提出了一种在输入空间中增量提取判别特征的新技术。在输出空间中聚类形成虚拟标签,提取输入空间中的判别特征。我们以粗到精的方式组织得到的判别子空间,并将信息存储在决策树中。这种增量层次判别回归(IHDR)决策树可以用层次概率分布模型来建模。我们使用来自143个不同主题的长度为33889帧的视频序列来演示该算法在人脸识别问题上的性能。正确识别率达到95.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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