Detection of Orange Shape Structure Parameters Based on DSP

Article Preview

Abstract:

A Detection system of Orange shape structure parameters Based on DSP, including its hardware part and software part was introduced. The hardware part equipped with the high performance DSP acts as the core component of the image processing, which provides a guarantee of the real-time of the shape detection. The software part introduces the basic principle of the orange recognition arithmetic, and differentiates by Zernike moments and k-means algorithm. The experiments show it can meet the practical detection requirements that the high detection accuracy of the normal fruit shape and the low-grade fruit shape.

You might also be interested in these eBooks

Info:

Periodical:

Key Engineering Materials (Volumes 480-481)

Pages:

17-20

Citation:

Online since:

June 2011

Authors:

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2011 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Jiang Si-min, Liu Chang: MS320C6000 DSP Application Development Tutorial [M]. Beijing Machinery Industry Press (2005).

Google Scholar

[2] Li Zhuo, Guo Li-hong:. fast image processing threshold selection method comparison studies [J]. Micro Computer Information (2006), pp.224-227.

Google Scholar

[3] Han Yan-fang, Shi Peng-fei: Based on digital image processing of the surface defect detection [J]. control technology (2005, 24(9), pp.135-145.

Google Scholar

[4] Nan xiang, Deng Si-er: based on the appearance of DSP-bearing surface defect detection system [J]. Bearings (2008(10), pp.41-43.

Google Scholar

[5] B Mehtre. Segmentation offingerprint images using the directional image [J]. Pattern Recognition (1987, 20(4), pp.429-435.

DOI: 10.1016/0031-3203(87)90069-0

Google Scholar

[6] B Mehtre: Segmentation offingerprint images a composite method [J]. Pattern Recognition (1989, 22(4), pp.381-385.

DOI: 10.1016/0031-3203(89)90047-2

Google Scholar

[7] Cai Yan-liu, Jia Zhen-red: Ostu criteria based on improved recursive algorithm for image segmentation [J]. Laser Medicine (2008(4).

Google Scholar

[8] Wang Zhi, He Sai-xian: A Theory Based on Adaptive Canny edge detection method [J]. Journal of Image and Graphics. (2004, 8(9), pp.957-962.

Google Scholar

[9] Papakostas G A. Boutalis Y S. Karras D A. et al: A new class of Zernike moments for computer vision applications [J] . Information Science (2007, 177(13), pp.2802-2819.

DOI: 10.1016/j.ins.2007.01.010

Google Scholar