期刊论文详细信息
International Journal of Advanced Research in Electrical, Electronics and Instrumentation Engineering
An Efficient Tool Identification System UsingPrincipal Component Analysis
article
Adithya Job1  Anooj Rohit1  B. Suryanarayanan1  Prashanth Joseph Panangadan1  Arun A. Balakrishnan1 
[1] Dept. of AEI, Rajagiri School of Engineering & Technology
关键词: Principal component analysis;    eigen values;    eigenvectors;    covariance matrix.;   
来源: Research & Reviews
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【 摘 要 】

An efficient implementation of tool identification system based on feature extraction technique is proposed and validated. Principal Component Analysis (PCA) is used for extracting features from a large training database images of different classes of tools like spanner screwdriver, knife and hammer. Original image from each class is rotated by 5° to obtain 72 training images for each individual class of tools. In the proposed method, the initial computation of features of the training images using PCA is computed for the entire database and is saved in the memory. Computed results are loaded from memory when a test image is provided to the system for identification. Simulation results shows that proposed method can recognize a tool within 15 seconds from the database containing 288 training images and hence the proposed method can be used for real time tool identification systems.

【 授权许可】

Unknown   

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