Image Retrieval Based on Structured Local Binary Kirsch Pattern
スポンサーリンク
概要
- 論文の詳細を見る
This Letter presents a new feature named structured localbinary Kirsch pattern (SLBKP) for image retrieval. Each input color image is decomposed into Y, Cb and Cr components. For each component image, eight 3×3 Kirsch direction templates are first performed pixel by pixel, and thus each pixel is characterized by an 8-dimenional edge-strength vector. Then a binary operation is performed on each edge-strength vector to obtain its integer-valued SLBKP. Finally, three SLBKP histograms are concatenated together as the final feature of each input colour image. Experimental results show that, compared with the existing structured local binary Haar pattern (SLBHP)-based feature, the proposed feature can greatly improve retrieval performance.
著者
-
Lu Zhe-ming
School Of Aeronautics And Astronautics Zhejiang University
-
GUO Shi-Ze
North Electronic Systems Engineering Corporation
-
Kang Guang-yu
North Electronic Systems Engineering Corporation
-
WANG De-Chen
North Electronic Systems Engineering Corporation
-
MA Long-Hua
School of Information Science and Engineering, Zhejiang University Ningbo Institute of Technology
関連論文
- Color Image Retrieval Based on Distance-Weighted Boundary Predictive Vector Quantization Index Histograms
- DEGREE-DEGREE CORRELATION MEASURES AND CLUSTERING COEFFICIENTS FOR DIRECTED COMPLEX NETWORK ANALYSIS
- Strength-Strength and Strength-Degree Correlation Measures for Directed Weighted Complex Network Analysis
- A Tree-Structured Deterministic Small-World Network
- Circuit partitioning based fingerprinting method for IP protection
- Image Retrieval Based on Structured Local Binary Kirsch Pattern
- Reversible Data Hiding for BTC-Compressed Images Based on Lossless Coding of Mean Tables
- An Approximate Flow Betweenness Centrality Measure for Complex Network
- Random Walks on Stochastic and Determinmistic Small-World Networks