Publication | Closed Access
Local Energy Pattern for Texture Classification Using Self-Adaptive Quantization Thresholds
148
Citations
45
References
2012
Year
EngineeringMachine LearningFeature DetectionImage RetrievalBiometricsImage ClassificationImage AnalysisData SciencePattern RecognitionLos AngelesMachine VisionLocal Energy PatternComputer ScienceMedical Image ComputingDeep LearningOptical Image RecognitionComputer VisionTexture AnalysisLocal Binary PatternContent-based Image RetrievalPattern Recognition Application
Local energy pattern, a statistical histogram-based representation, is proposed for texture classification. First, we use normalized local-oriented energies to generate local feature vectors, which describe the local structures distinctively and are less sensitive to imaging conditions. Then, each local feature vector is quantized by self-adaptive quantization thresholds determined in the learning stage using histogram specification, and the quantized local feature vector is transformed to a number by N-nary coding, which helps to preserve more structure information during vector quantization. Finally, the frequency histogram is used as the representation feature. The performance is benchmarked by material categorization on KTH-TIPS and KTH-TIPS2-a databases. Our method is compared with typical statistical approaches, such as basic image features, local binary pattern (LBP), local ternary pattern, completed LBP, Weber local descriptor, and VZ algorithms (VZ-MR8 and VZ-Joint). The results show that our method is superior to other methods on the KTH-TIPS2-a database, and achieving competitive performance on the KTH-TIPS database. Furthermore, we extend the representation from static image to dynamic texture, and achieve favorable recognition results on the University of California at Los Angeles (UCLA) dynamic texture database.
| Year | Citations | |
|---|---|---|
Page 1
Page 1