A general framework for object detection

C. Papageorgiou, Michael Oren, T. Poggio
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引用次数: 1712

Abstract

This paper presents a general trainable framework for object detection in static images of cluttered scenes. The detection technique we develop is based on a wavelet representation of an object class derived from a statistical analysis of the class instances. By learning an object class in terms of a subset of an overcomplete dictionary of wavelet basis functions, we derive a compact representation of an object class which is used as an input to a support vector machine classifier. This representation overcomes both the problem of in-class variability and provides a low false detection rate in unconstrained environments. We demonstrate the capabilities of the technique in two domains whose inherent information content differs significantly. The first system is face detection and the second is the domain of people which, in contrast to faces, vary greatly in color, texture, and patterns. Unlike previous approaches, this system learns from examples and does not rely on any a priori (hand-crafted) models or motion-based segmentation. The paper also presents a motion-based extension to enhance the performance of the detection algorithm over video sequences. The results presented here suggest that this architecture may well be quite general.
目标检测的一般框架
本文提出了一种用于杂乱场景静态图像中目标检测的通用可训练框架。我们开发的检测技术是基于对类实例的统计分析得出的对象类的小波表示。通过在小波基函数的过完备字典的子集中学习一个对象类,我们推导出一个对象类的紧凑表示,该对象类被用作支持向量机分类器的输入。这种表示既克服了类内可变性的问题,又在不受约束的环境中提供了较低的误检率。我们在两个领域展示了该技术的能力,这两个领域的固有信息内容有很大的不同。第一个系统是人脸检测,第二个系统是人的领域,与人脸相比,人的颜色、纹理和图案变化很大。与以前的方法不同,该系统从示例中学习,不依赖于任何先验(手工制作)模型或基于运动的分割。本文还提出了一种基于运动的扩展,以提高视频序列检测算法的性能。这里给出的结果表明,这种架构很可能是非常通用的。
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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