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A fast fused part-based model with new deep feature for pedestrian detection and security monitoring

机译:一种快速融合的零件型号,具有新的深层特征,用于行人检测和安全监控

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摘要

In recent years, pedestrian detection based on computer vision has been widely used in intelligent transportation, security monitoring, assistance driving and other related applications. However, one of the remaining open challenges is that pedestrians are partially obscured and their posture changes. To address this problem, deformable part model (DPM) uses a mixture of part filters to capture variation in view point and appearance and achieves success for challenging datasets. Nevertheless, the expensive computation cost of DPM limits its ability in the real-time application. This study propose a fast fused part-based model (FFPM) for pedestrian detection to detect the pedestrians efficiently and accurately in the crowded environment. The first step of the proposed method trains six Adaboost classifiers with Haar-like feature for different body parts (e.g., head, shoulders, and knees) to build the response feature maps. These six response feature maps are combined with full-body model to produce spatial deep features. The second step of the proposed method uses the deep features as an input to support vector machine (SVM) to detect pedestrian. A variety of strategies is introduced in the proposed model, including part-based to full-body method, spatial filtering, and multi-ratios combination. Experiment results show that the proposed FFPM method improves the computation speed of DPM and maintains the performance in detection. (C) 2019 Elsevier Ltd. All rights reserved.
机译:近年来,基于计算机视觉的行人检测已广泛用于智能运输,安全监控,辅助驾驶和其他相关应用。然而,剩下的开放挑战之一是行人部分地模糊不清,其姿势变化。为了解决这个问题,可变形部分模型(DPM)使用部件过滤器的混合来捕获视点和外观的变化,并实现了具有挑战性的数据集的成功。然而,DPM的昂贵计算成本限制了其实时应用中的能力。本研究提出了一种快速融合的基于部分的模型(FFPM),用于行人检测,以在拥挤的环境中有效和准确地检测行人。所提出的方法的第一步列举了六个Adaboost分类器,具有哈尔的特征,用于不同的身体部位(例如,头部,肩部和膝盖)来构建响应特征图。这六个响应特征映射与全身模型相结合,以产生空间深度功能。所提出的方法的第二步使用深度特征作为支持向量机(SVM)来检测行人的输入。在所提出的模型中引入了各种策略,包括基于全身方法,空间滤波和多比率组合。实验结果表明,所提出的FFPM方法提高了DPM的计算速度,并保持了检测中的性能。 (c)2019年elestvier有限公司保留所有权利。

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