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Pedestrian Detection Based on Multi-Block Local Binary Pattern and Biologically Inspired Feature

机译:基于多块局部二值模式和生物启发特征的行人检测

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摘要

Nowadays pedestrian detection plays an important role in security and driving assistance. Detecting moving object is complex, and some of the detection methods are comparatively ineffective and slow. In relation to human detection it is very useful to combine independent information sources, such as appearance and motion. To achieve acceptable detection performance, we propose inter-frames differencing image to compute the region of interest, and MB-BIF to extract features. The MB-BIF approach combines two well-known methods, the Multi-Block Local Binary Pattern and Biologically Inspired Method. We evaluate the performance of different features descriptors on different databases, and our method shows good efficiency.
机译:如今,行人侦查在安全和驾驶协助中起着重要作用。检测运动物体很复杂,并且某些检测方法相对无效且缓慢。关于人类检测,将独立的信息源(例如外观和运动)组合在一起非常有用。为了获得可接受的检测性能,我们提出了帧间差分图像来计算感兴趣区域,并提出MB-BIF来提取特征。 MB-BIF方法结合了两种众所周知的方法,即多块局部二进制模式和生物启发方法。我们评估了不同特征描述符在不同数据库上的性能,并且我们的方法显示出良好的效率。

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