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Accelerate proposal generation in R-CNN methods for fast pedestrian extraction

机译:利用R-CNN方法加速提案生成,以快速提取行人

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Purpose The purpose of this study is to develop a novel region-based convolutional neural networks (R-CNN) approach that is more efficient while at least as accurate as existing R-CNN methods. In this way, the proposed method, namely R-2-CNN, provides a more powerful tool for pedestrian extraction for person re-identification, which involve a huge number of images and pedestrian needs to be extracted efficiently to meet the real-time requirement. Design/methodology/approach The proposed R-2-CNN is tested on two types of data sets. The first one the USC Pedestrian Detection data set, which consists of three sub-sets USC-A, UCS-B and USC-C, with respect to their characteristics. This data set is used to test the performance of R-2-CNN in the pedestrian extraction task. The speed and performance of the investigated algorithms were collected. The second data set is the PASCAL VOC 2007 data set, which is a common benchmark data set for object detection. This data set was used to analyze characteristics of R-2-CNN in the case of general object detection task. Findings This study proposes a novel R-CNN method that is both more efficient and more accurate than existing methods. The method, when used as an object detector, would facilitate the data preprocessing stage of person re-identification. Originality/value The study proposes a novel approach for object detection, which shows advantages in both efficiency and accuracy for pedestrian detection task. It contributes to both data preprocessing for person re-identification and the research on deep learning.
机译:目的本研究的目的是开发一种新颖的基于区域的卷积神经网络(R-CNN)方法,该方法效率更高,但至少与现有R-CNN方法一样准确。这样,提出的方法,即R-2-CNN,为行人提取提供了更强大的工具,用于人的重新识别,其中涉及大量图像,需要有效地提取行人以满足实时需求。 。设计/方法/方法提议的R-2-CNN在两种类型的数据集上进行了测试。第一个USC行人检测数据集,就其特征而言,它由三个子集USC-A,UCS-B和USC-C组成。该数据集用于测试行人提取任务中R-2-CNN的性能。收集了研究算法的速度和性能。第二个数据集是PASCAL VOC 2007数据集,它是用于对象检测的通用基准数据集。在一般目标检测任务的情况下,该数据集用于分析R-2-CNN的特征。结论本研究提出了一种新颖的R-CNN方法,该方法比现有方法更有效,更准确。当该方法用作对象检测器时,将有助于人员重新识别的数据预处理阶段。原创性/价值该研究提出了一种新颖的物体检测方法,该方法显示了行人检测任务在效率和准确性上的优势。它为人识别的数据预处理和深度学习研究做出了贡献。

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