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Combining Multiple Complementary Features for Pedestrian and Motorbike Detection

机译:组合用于行人和摩托车检测的多个互补特征

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Pedestrian and motorbike detection are two important areas in obstacle detection on road. Most state-of-the-art detectors are constructed with new features or learning methods on Histograms of Oriented Gradients (HOG) features. However, few researches focus on analyzing which features are complementary for the aforementioned detection. According to our study of pedestrians and motorbikes, there are three major properties including shape, texture, and self-similarity. We design a Shape, Texture and Self-Similarity (STSS) feature for these properties. The features we have employed here are HOG, Local Oriented Pattern (LOP), Color Self-Similarity (CSS), and Texture Self-Similarity (TSS). The STSS detector which combines Shape, Texture, and Self-Similarty features achieves 31% log-average miss rate. At the same time, 93% detection rate at 10~(-4) false positives per window on INRIA Person Dataset has also been concluded. Besides, we also have evaluated our detector on Caltech Motorbike Dataset and Caltech Pedestrian Dataset, and found the detector outperforms HOG detector in these datasets. As a result, we have shown that these features are complement to each other and useful in pedestrian and motorbike detection.
机译:行人和摩托车检测是道路上障碍物检测的两个重要领域。大多数最先进的探测器由导向梯度(HOG)特征的直方图上的新功能或学习方法构建。然而,很少有研究专注于分析哪些特征是对上述检测的互补性。根据我们对行人和摩托车的研究,有三种主要性质,包括形状,质地和自相似性。我们设计了这些属性的形状,纹理和自相似性(STSS)功能。我们这里所雇用的功能是猪,本地面向模式(LOP),颜色自相似性(CSS)和纹理自相似性(TSS)。 STSS检测器结合了形状,纹理和自我SIMILARTY功能,实现了31%的日志平均未命中率。同时,初始初期,在初始人数数据集中,每窗口为10〜(4)幅度为93%的检测率。此外,我们还在Caltech摩托车数据集和CALTECH步行数据集上进行了评估了我们的探测器,发现探测器优于这些数据集中的猪探测器。结果,我们表明这些特征彼此相互补充,可用于行人和摩托车检测。

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