Autonomous Learning for Tracking and Recognition

N. Binh
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引用次数: 0

Abstract

We present an efficient approach for autonomous learning an object model from video or image sequences. The idea is to employ online boosting technique to adaptively learn an object representation from only as few as one labeled training sample. Our main contributions are: (1) A robust updating strategy of a discriminative classifier, which allows effective learning of an object model for tracking and recognition; (2) Learning and tracking are performed in a single procedure with possibility of reducing drifting and ability to recover tracking failure; and (3) a simple yet reliable framework for object recognition. Our main concern is to use the approach for the problem of hand and face tracking and gesture recognition. However, the proposed framework can be applied to other objects. Experiments on different data sets (publicity available) show the efficiency of our approach over very recent published approaches on different objects.
跟踪和识别的自主学习
我们提出了一种从视频或图像序列中自主学习对象模型的有效方法。其思想是采用在线增强技术,从最少一个标记的训练样本中自适应地学习对象表示。我们的主要贡献有:(1)判别分类器的鲁棒更新策略,该策略允许有效地学习用于跟踪和识别的对象模型;(2)学习和跟踪在一个过程中进行,具有减少漂移的可能性和恢复跟踪故障的能力;(3)一个简单而可靠的目标识别框架。我们主要关注的是将该方法用于手和脸的跟踪和手势识别问题。然而,建议的框架可以应用于其他对象。在不同数据集上的实验(公开可用)表明,我们的方法比最近发表的针对不同对象的方法更有效。
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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