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A trainable system for object detection

机译:可训练的物体检测系统

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This paper presents a general, trainable system for object detection in unconstrained, cluttered scenes. The system derives much of its power from a representation that describes an object class in terms of an overcomplete dictionary of local, oriented, multiscale intensity differences between adjacent regions, efficiently computable as a Haar wavelet transform. This example-based learning approach implicitly derives a model of an object class by training a support vector machine classifier using a large set of positive and negative examples. We present results on face, people, and car detection tasks using the same architecture. In addition, we quantify how the representation affects detection performance by considering several alternate representations including pixels and principal components. We also describe a real-time application of our person detection system as part of a driver assistance system. [References: 34]
机译:本文提出了一种通用的,可训练的系统,用于在不受约束的混乱场景中进行目标检测。该系统从表示对象类别的表示中获得了很大的力量,该表示形式是根据相邻区域之间局部,定向,多尺度强度差异的不完整字典来描述的,该字典可有效地作为Haar小波变换进行计算。这种基于示例的学习方法通​​过使用大量正例和负例来训练支持向量机分类器,从而隐式地得出对象类的模型。我们使用相同的架构在面部,人员和汽车检测任务上呈现结果。另外,我们通过考虑包括像素和主成分在内的几种替代表示来量化表示如何影响检测性能。我们还描述了作为驾驶员辅助系统一部分的人员检测系统的实时应用。 [参考:34]

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