会议专题

Recognition of Pests based on Compressive Sensing Theory

In order to improve the performance of the existing recognition methods of pests, the limitations of these methods are analyzed in this paper. Based on the analysis, the novel recognition method of pests by using compressive sensing theory is presented in this paper. In the proposed method, a large number of representative training samples of pests are used to construct the training samples matrix, then the sparse decomposition representation of the testing samples of pests is obtained by solving the Li-norm optimization problem, which contains distinct class information and could be used for the different species of pests recognition directly. The 12 species of stored-grain pests and the 110 species of common pests are separately recognized by the proposed method. The experimental results prove that the application of compressive sensing theory in the recognition of pests is practical and feasible.

pests recognition compressive sensing feature parameters sparse decomposition recognition precision

Antai Han Hut Peng Jianfeng Li Jianqiang Han Xiaohua Guo

Institute of Electrical Engineering and Electronic Technology China Jiliang University Hangzhou31001 Fair Friend Institute of Electromechanics Hangzhou Vocational and Technical College Hangzhou3100l8,

国际会议

2011 2nd International Conference on Data Storage and Data Engineering(DSDE 2011)(2011年第二届数据存储与数据工程国际会议)

西安

英文

263-266

2011-05-13(万方平台首次上网日期,不代表论文的发表时间)