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计算机科学 2013
Robust and Fast Feature Points Matching
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Abstract:
Aiming at the problem that most stereo matching algorithms cost too much time, an algorithm in which fca- lure points are detected in frectuency domain and feature vectors are extracted in spatial domain was proposed. Firstly, effective coding theory was studied. Secondly, the salient features were located in the image and their scales were com- puled. Finally, patterns whose scales are matched with the feature points' scales were constructed to extract features, and then,fcatures were matched by the nearest neighbor rule. The experiment results show that the proposed method has high computational effciency, less time consumption, strong robustness to scale and affine tranformation and make a balance between speed and performance.