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A Novel Multi-Resolution HOG based Algorithm for Real-Time Hands Detection

机译:一种新型实时手检测的多分辨率生猪算法

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This paper presents a novel feature based multi-resolution framework for hand detection. In the algorithm, Histogram of Oriented Gradient (HOG) is used for basic feature representation. To avoid the time consuming down-sampling procedure, features of increasing resolutions are directly extracted from the proposed Gradient-Orientation Image (GOI) under decreasing scales. For efficient detection, cascade is trained by letting the high stage use more discriminative high resolution features. The earlier stages can reject a large quantity of negatives by just using computational cheap low resolution features, and the later stages will carefully diagnose a small number of remaining candidate regions using powerful and expensive high resolution features. Extensive experiments are implemented to demonstrate its improvement and efficiency under complicate scenarios.
机译:本文提出了一种基于新颖的手动检测的多分辨率框架。在算法中,面向梯度(HOG)的直方图用于基本特征表示。为避免耗时的缩小采样过程,在减少尺度下,从所提出的梯度方向图像(GOI)直接提取越来越多的分辨率的特征。为了有效检测,通过让高级使用更多辨别高分辨率特征来训练级联培训。较早的阶段只需使用计算廉价的低分辨率功能即可拒绝大量的负面,并且后来的阶段将仔细诊断使用强大昂贵的高分辨率特征的少数剩余的候选区域。实施了广泛的实验,以展示在复杂性情景下的提高和效率。

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