首页> 外文会议>International Conference on Advanced Concepts for Intelligent Vision Systems(ACIVS 2006); 20060918-21; Antwerp(BE) >Dedicated Hardware for Real-Time Computation of Second-Order Statistical Features for High Resolution Images
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Dedicated Hardware for Real-Time Computation of Second-Order Statistical Features for High Resolution Images

机译:实时计算高分辨率图像二阶统计特征的专用硬件

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摘要

We present a novel dedicated hardware system for the extraction of second-order statistical features from high-resolution images. The selected features are based on gray level co-occurrence matrix analysis and are angular second moment, correlation, inverse difference moment and entropy. The proposed system was evaluated using input images with resolutions that range from 512x512 to 2048x2048 pixels. Each image is divided into blocks of user-defined size and a feature vector is extracted for each block. The system is implemented on a Xilinx VirtexE-2000 FPGA and uses integer arithmetic, a sparse co-occurrence matrix representation and a fast logarithm approximation to improve efficiency. It allows the parallel calculation of sixteen co-occurrence matrices and four feature vectors on the same FPGA core. The experimental results illustrate the feasibility of real-time feature extraction for input images of dimensions up to 2048x2048 pixels, where a performance of 32 images per second is achieved.
机译:我们提出了一种新颖的专用硬件系统,用于从高分辨率图像中提取二阶统计特征。所选特征基于灰度共生矩阵分析,并且是角秒矩,相关性,反差矩和熵。所建议的系统是使用分辨率在512x512到2048x2048像素范围内的输入图像进行评估的。将每个图像划分为用户定义大小的块,并为每个块提取特征向量。该系统在Xilinx VirtexE-2000 FPGA上实现,并使用整数算法,稀疏共现矩阵表示和快速对数近似来提高效率。它允许在同一FPGA内核上并行计算16个共现矩阵和4个特征向量。实验结果说明了对于尺寸最大为2048x2048像素的输入图像进行实时特征提取的可行性,该性能可实现每秒32张图像的性能。

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