A new type of hybrid features for human detection

A. Mozafari, M. Jamzad
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引用次数: 2

Abstract

Human detection is one of the hard problems in object detection field. There are many challenges like variation in human pose, different clothes, non-uniform illumination, cluttered background and occlusion which make this problem much harder than other object detection problems. Defining good features, which can be robust to this wide range of variations, is still an open issue in this field. To overcome this challenge, in this paper we proposed a new set of hybrid features. We combined the Histogram of Oriented Gradient (HOG) with the new features called Histogram of Small Edges (HOSE) which is introduced in this paper. These two kinds of features have two different approaches for extracting features and have the complementary role for each other. Our experimental results on INRIA dataset showed that using the proposed hybrid features provides better detection rate in comparison with state of the art features.
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一种用于人体检测的新型混合特征
人体检测是目标检测领域的难点之一。有许多挑战,如人体姿势的变化,不同的衣服,不均匀的照明,杂乱的背景和遮挡,使这个问题比其他物体检测问题更难。在这个领域中,定义一个好的功能(它可以适应如此广泛的变化)仍然是一个开放的问题。为了克服这一挑战,本文提出了一组新的混合特征。我们将定向梯度直方图(HOG)与本文引入的小边直方图(HOSE)相结合。这两种特征提取方法不同,但又具有互补作用。我们在INRIA数据集上的实验结果表明,与现有特征相比,使用所提出的混合特征提供了更好的检测率。
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