CVDec 25, 2014

Gabor wavelets combined with volumetric fractal dimension applied to texture analysis

arXiv:1412.7856v160 citations
Originality Incremental advance
AI Analysis

This is an incremental improvement for texture feature extraction in computer vision.

The paper tackles the challenge of texture analysis by enhancing Gabor wavelets with a fractal signature of magnitude spaces, resulting in a method that outperforms earlier approaches on multiple texture image databases.

Texture analysis and classification remain as one of the biggest challenges for the field of computer vision and pattern recognition. On this matter, Gabor wavelets has proven to be a useful technique to characterize distinctive texture patterns. However, most of the approaches used to extract descriptors of the Gabor magnitude space usually fail in representing adequately the richness of detail present into a unique feature vector. In this paper, we propose a new method to enhance the Gabor wavelets process extracting a fractal signature of the magnitude spaces. Each signature is reduced using a canonical analysis function and concatenated to form the final feature vector. Experiments were conducted on several texture image databases to prove the power and effectiveness of the proposed method. Results obtained shown that this method outperforms other early proposed method, creating a more reliable technique for texture feature extraction.

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