一种改进的快速RCNN行人检测方法

S. Panigrahi, U. Raju
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引用次数: 0

摘要

行人检测在机器人、自动驾驶、辅助生活和监控等应用中发挥着关键作用。行人检测问题,虽然许多计算机视觉研究者都在研究,但还远远没有解决。尺度、姿态、遮挡、光照等因素会影响方法的性能。在这项工作中,提出了最常用的深度卷积神经网络模型ResNet18的修改。改进后的CNN结构构成了Faster RCNN模型的基础,用于预测图像中行人的位置。该方法在图像的特征映射提取方面进行了改进。为了评估所提出的方法,考虑了两个基准数据集INRIA行人和PASCAL VOC 2012。用于评估的性能指标是检测误差权衡和精确召回曲线。并进行了统计分析。将所提出的方法与最先进的检测方法进行了比较。
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An improved Faster RCNN for Pedestrian Detection
Pedestrian detection plays a pivotal role in applications such as robotics, automated driving, assistive living, and surveillance. The problem of pedestrian detection, although approached by many computer vision researchers is far from solved. The scale, pose, occlusion, illumination, and many such factors affect the performance of the methods. In this work, a modification of the most commonly used deep convolutional neural network model ResNet18 is proposed. The modified CNN structure forms the base of the Faster RCNN model utilized to predict the locations of pedestrians in the image. The proposed method has been improved in terms of the feature map extraction of the image. To evaluate the proposed method, two benchmark datasets INRIA Pedestrian and PASCAL VOC 2012 are considered. The performance metrics used for evaluation are Detection Error Trade-off and Precision-Recall Curve. A statistical analysis is also conducted. The proposed method is compared against state-of-the-art detection methods.
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