FPGA-based System for Real-Time Video Texture Analysis

被引:0
作者
Dimitris Maroulis
Dimitris K. Iakovidis
Dimitris Bariamis
机构
[1] University of Athens,Real Time Systems and Image Analysis Laboratory, Department of Informatics and Telecommunications
来源
Journal of Signal Processing Systems | 2008年 / 53卷
关键词
Field programmable gate arrays; Parallel architectures; Pattern recognition; Video signal processing; Real-time system;
D O I
暂无
中图分类号
学科分类号
摘要
This paper describes a novel system for real-time video texture analysis. The system utilizes hardware to extract second-order statistical features from video frames. These features are based on the Gray Level Co-occurrence Matrix (GLCM) and describe the textural content of the video frames. They can be used in a variety of video analysis and pattern recognition applications, such as remote sensing, industrial and medical. The hardware is implemented on a Virtex-XCV2000E-6 FPGA programmed in VHDL. It is based on an architecture that exploits the symmetry and the sparseness of the GLCM and calculates the features using integer and fixed point arithmetic. Moreover, it integrates an efficient algorithm for fast and accurate logarithm approximation, required in feature calculations. The software handles the video frame transfers from/to the hardware and executes only complementary floating point operations. The performance of the proposed system was experimentally evaluated using standard test video clips. The system was implemented and tested and its performance reached 133 and 532 fps for the analysis of CIF and QCIF video frames respectively. Compared to the state of the art GLCM feature extraction systems, the proposed system provides more efficient use of the memory bandwidth and the FPGA resources, in addition to higher processing throughput, that results in real time operation. Furthermore, its fundamental units can be used in any hardware application that requires sparse matrix representation or accurate and efficient logarithm estimation.
引用
收藏
相关论文
共 74 条
  • [1] Deng Y.(2001)Unsupervised segmentation of color-texture regions in images and video IEEE Transactions Pattern Analysis and Machine Intelligence 23 800-810
  • [2] Manjunath B. S.(2001)Multiple feature clustering for image sequence segmentation Pattern Recognition Letters 22 1207-1217
  • [3] Kim J.(2002)Adaptive texture and color segmentation for tracking moving objects Pattern Recognition 35 2013-2029
  • [4] Chen T.(2004)Texture boundary detection for real-time tracking Proceedings of the ECCV 2 566-577
  • [5] Ozyildiz E.(2004)Adaptive shape and texture intra refreshment schemes for improved error resilience in object-based video coding IEEE Transactions on Image Processing 13 662-676
  • [6] Krahnstöver N.(1973)Textural features for image classification IEEE Transactions on Systems, Man and Cybernetics 3 610-621
  • [7] Sharma R.(1986)Texton gradients: the texton theory revisited Biological Cybernetics 54 245-251
  • [8] Shahrokni A.(2003)Computer aided tumor detection in endoscopic video using color wavelet features IEEE Transaction on Information Technology in Biomedicine 7 141-152
  • [9] Drummond T.(1995)An investigation of the textural characteristics associated with gray level cooccurrence matrix statistical parameters IEEE Transactions Geoscience and Remote Sensing 33 293-304
  • [10] Fua P.(1988)Texture measures for carpet wear assessment IEEE Transactions Pattern Analysis and Machine Intelligence 10 92-104