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复杂运动目标的学习与识别
引用本文:赵杰煜,王小权.复杂运动目标的学习与识别[J].中国图象图形学报,2001,6(5):460-464.
作者姓名:赵杰煜  王小权
作者单位:赵杰煜(宁波大学信息科学与技术研究所宁波 315211)       王小权(宁波大学信息科学与技术研究所宁波 315211)
基金项目:国家自然科学基金项目(NSFC-69805002);教育部优秀青年资助项目和浙江省自然科学基金青年人才培养专项资金项目
摘    要:针对复杂运动目标识别问题,提出了一个基于反馈型随机神经网络的运动认脸与物体的自动识别系统,该系统具有强大学习能力,运动目标检测与识别快速准确等特点,在对该的核心-反馈型二元网络进行深入分析的基础上,提出了一种适合于该神经网络模型的高效渐进式Boltzmann学习算法,实验结果表明,该识别系统性能优异,在几个方面超过了eTrue公司的TrueFace人脸识别系统。

关 键 词:人脸识别  随机二元神经网络  渐进式Boltzmann学习  自动识别  复杂运动目标  目标识别  计算机识别
文章编号:1006-8961(2001)05-0460-05
修稿时间:2/1/2001 12:00:00 AM

Learning to Recognize Complex Moving Objects
ZHAO Jie,yu and WANG Xiao,quan.Learning to Recognize Complex Moving Objects[J].Journal of Image and Graphics,2001,6(5):460-464.
Authors:ZHAO Jie  yu and WANG Xiao  quan
Abstract:This paper presents an automatic system for human face and moving object recognition. The system developed is based on a novel recurrent stochastic neural network, it has a strong learning power and is able to recognize a moving target in real time. The detection of the moving object is implemented by utilizing the skin color distribution and the motion information. The object is tracked in real time with an efficient adaptive mean shift algorithm. The work in this paper is mainly focused on the disign of the novel recurrent neural network and the efficient incremental Boltzmann learning algorithm. The improved simulated annealing technique is also discussed. Theoretical results offer a unique solution to the training of a large size network. Experiments on human face recognition are carried out with a recurrent neural network of 4827 neurons and 129951 connections. The results show the performance of the recognizer is comparable to that of the well known TrueFace system.
Keywords:Face recognition  Stochastic binary network  Incremental Boltzmann learning
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