更快的R-CNN:一种实时目标检测方法

Raducu Gavrilescu, C. Zet, C. Fosalau, M. Skoczylas, David Coţovanu
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引用次数: 38

摘要

本文的目的是提供一个例子,说明如何使用最新的图像处理算法来安全检测交通指标,以便在驾驶汽车时使用。本文的结论是Faster Regional based Convolutional Neural Network (Faster R-CNN)算法在准确率和速度上都有一定的优势,适合应用于此类应用。更快的R-CNN是将Region Proposal Network (RPN)和Fast-RCNN算法合并到一个网络中的结果。为了提高视频处理能力,使用图形处理单元(GPU)在包含4类3000张图像的数据集上以15 fps的速度进行训练和测试。该数据集由包含交通灯和STOP指示器的三个阶段的图像组成。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Faster R-CNN:an Approach to Real-Time Object Detection
The objective of the paper is to present an example on how to use the latest image processing algorithms to detect traffic indicators safely enough to be used while driving a car. The conclusion of the paper is that the Faster Regional based Convolutional Neural Network (Faster R-CNN) algorithm has qualities in terms of accuracy and speed that make it suitable to be used in such applications. Faster R-CNN is a result of merging Region Proposal Network (RPN) and Fast-RCNN algorithms into a single network. For increasing the video processing power, a Graphics Processing Unit (GPU) was employed for training and testing at a speed of 15 fps on a dataset containing 3000 images for 4 classes. The dataset is composed of images containing the three phases of a traffic light and the STOP indicator.
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