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Speed improvement of object recognition using Boundary-Bitmap of histogram of oriented Gradients

机译:使用定向梯度直方图的边界位图提高目标识别速度

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Commonly, HoG/SVM classifier uses rectangular images for HoG feature descriptor extraction and training. This means that significant additional work has to be done to process irrelevant pixels belonging to the background surrounding the object of interest. Moreover, some areas of the foreground also can be eliminated from the processing to improve the algorithm speed and memory wise. In Boundary-Bitmap HoG approach proposed in this paper, the boundary of irregular shape of the object is represented by a bitmap to avoid processing of extra background and (partially) foreground pixels. Bitmap, derived from the training dataset, encodes those portions of an image to be used to train a classifier. Experimental results show that not only the proposed algorithm decreases the workload associated with HoG/SVM classifiers by 92.5% compared to the state-of-the-art, but also it shows an average increase about 6% in recall and a decrease about 3% in precision in comparison with standard HoG.
机译:通常,HoG / SVM分类器使用矩形图像进行HoG特征描述符的提取和训练。这意味着必须做大量的额外工作来处理属于感兴趣对象周围背景的无关像素。而且,前景中的某些区域也可以从处理中消除,以提高算法速度和存储明智性。在本文提出的边界位图HoG方法中,对象的不规则形状的边界由位图表示,以避免处理多余的背景和(部分)前景像素。从训练数据集中获得的位图对要用于训练分类器的图像的那些部分进行编码。实验结果表明,与现有技术相比,该算法不仅使与HoG / SVM分类器相关的工作量减少了92.5%,而且召回率平均提高了约6%,而召回率则降低了约3%与标准HoG相比,精度更高。

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