高级驾驶辅助系统的行人检测:一种迁移学习方法

R. Ayachi, Mouna Afif, Yahia Said, Abdessalem Ben Abdelaali
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引用次数: 4

摘要

行人检测是一项必须集成到高级驾驶辅助系统(ADAS)中的重要任务。对于行人检测任务,必须遵守许多规则,如高性能、实时处理和轻量级尺寸,以适应ADAS的嵌入式设备。本文提出了一种基于卷积神经网络(CNN)的行人检测系统。CNN是一种深度学习模型,由于其在图像处理和决策方面的强大功能,通常用于分类和检测等计算机视觉任务。提出的CNN模型被命名为Yolov3 tiny。它首先用于一般目标检测。在这项工作中,我们将迁移学习技术应用于所提出的CNN模型,使其适合行人检测。使用美国加州理工学院的行人检测数据集来训练和评估所提出的模型。该模型平均精度为76.7%,推理时间为202fps。
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pedestrian detection for advanced driving assisting system: a transfer learning approach
pedestrian detection is an important task that must be integrated into an advanced driving assisting system (ADAS). For a pedestrian detection task many rules must be respected like high performance, real-time processing, and lightweight size to fit into the embedded device of the ADAS. In this paper, we propose a pedestrian detection system based on a convolutional neural network (CNN). CNN is a deep learning model generally used for computer vision tasks like classification and detection because of its power in image processing and decision making. The proposed CNN model is named Yolov3 tiny. It was firstly used for general object detection. In this work, we applied the transfer learning technique on the proposed CNN model to make it suitable for pedestrian detection. The pedestrian detection dataset Caltech US was used to train and evaluate the proposed model. The model achieves an average precision of 76.7% and an inference time of 202 FPS.
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