基于hog的旋转窗口检测器在鱼眼图像中的人体检测

An-Ti Chiang, Yao Wang
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引用次数: 30

摘要

鱼眼摄像机是一种有效的手段,提供一个全方位的视频记录,在一个大的区域使用一个单一的摄像机。尽管在传统相机捕获的图像中已经开发出有效的人体检测算法,但在鱼眼图像中进行人体检测仍然是一个开放的挑战。认识到人类通常出现在鱼眼图像中从中心发出的径向线上,我们提出将径向线上的每个搜索窗口旋转到垂直参考线上后,应用基于定向梯度直方图(Histogram of Oriented Gradient, HOG)特征的流行人类检测算法。我们通过这样的旋转提取正、负样例,利用HOG特征训练SVM分类器。为了检测给定图像中的人,我们连续旋转图像,并在每次旋转后使用训练好的分类器沿参考线检测包含人的窗口。我们使用多种窗口大小来检测具有不同外观尺寸的人。我们进一步开发了一种算法来发现覆盖同一个人的多个重叠窗口,并识别出最适合该人的窗口。该方法在包含多个不同姿势和大小的人的低分辨率、低对比度图像中产生了高精度的人体检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human detection in fish-eye images using HOG-based detectors over rotated windows
Fish-eye cameras are efficient means to provide an omni-view video recording over a large area using a single camera. Although effective algorithms for human detection in images captured by conventional cameras have been developed, human detection in fish-eye images remains an open challenge. Recognizing that humans typically appear on radial lines emitted from the center in fish-eye images, we propose to apply the popular human detection algorithm based on the Histogram of Oriented Gradient (HOG) features after rotating each search window on a radial line to the vertical reference line. We extract positive and negative examples by such rotations to train the SVM classifier using HOG features. To detect humans in a given image, we rotate the image successively and detect windows containing humans along the reference line after each rotation using the trained classifier. We use multiple window sizes to detect people with different appearance sizes. We further develop an algorithm to discover multiple overlapping windows covering the same person and identify the window that encloses the person the best. The proposed method has yielded highly accurate human detection in low-resolution, low-contrast images containing multiple people with varying poses and sizes.
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