Tung H. Dinh, Dao Q. Vu, Vu-Duc Ngo, N. P. Ngoc, V. T. Truong
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引用次数: 6
摘要
拐角检测是车辆跟踪和车速估计算法中计算量最大的步骤。为了在交通监控应用中实现实时车辆跟踪,需要高速的拐角检测架构。本文提出了一种高吞吐量的FPGA架构,用于检测由摄像机捕获的交通图像的特殊特征(更详细地说是角点)。该模块是基于FAST (Features from Accelerated Segment Test)算法实现的,并进行了一些修改以适应交通图像。所提出的架构能够减少大量不必要的检测角点,并在640 × 480分辨率下保持每秒超过一千张8位灰度图像的高吞吐量。资源使用比现有工作低21%,这使得该架构可以在几乎所有类型的FPGA上实现。
High throughput FPGA architecture for corner detection in traffic images
Corner detection is the most computationally intensive step in vehicle tracking and vehicle speed estimation algorithms. In order to have real-time vehicle tracking for traffic surveillance applications, high speed architectures for corner detection are needed. This paper presents a high throughput FPGA architecture for detecting special features (corners in more detail) on traffic images which are captured by cameras. The module is implemented based on the FAST (Features from Accelerated Segment Test) algorithm with some modifications to be suitable for traffic images. The proposed architecture is able to reduce a great number of unnecessary detected corner points and maintain a high throughput of more than a thousand of 8-bit gray-scale images per second at 640 × 480 resolution. The resource usage is 21% lower than that of existing work, which allows the architecture to be implemented on almost all types of FPGA.