Shape Representation and Classification through Pattern Spectrum and Local Binary Pattern - A Decision Level Fusion Approach
This work addresses shape retrieval for computer vision applications, but it is incremental as it combines existing methods with a fusion approach.
The paper tackles shape classification by fusing Pattern Spectrum and Local Binary Pattern features at the decision level, using Earth Movers Distance for matching, and achieves improved retrieval accuracy on standard datasets like Kimia-99, Kimia-216, and MPEG-7, with results validated by Bulls eye scores.
In this paper, we present a decision level fused local Morphological Pattern Spectrum(PS) and Local Binary Pattern (LBP) approach for an efficient shape representation and classification. This method makes use of Earth Movers Distance(EMD) as the measure in feature matching and shape retrieval process. The proposed approach has three major phases : Feature Extraction, Construction of hybrid spectrum knowledge base and Classification. In the first phase, feature extraction of the shape is done using pattern spectrum and local binary pattern method. In the second phase, the histograms of both pattern spectrum and local binary pattern are fused and stored in the knowledge base. In the third phase, the comparison and matching of the features, which are represented in the form of histograms, is done using Earth Movers Distance(EMD) as metric. The top-n shapes are retrieved for each query shape. The accuracy is tested by means of standard Bulls eye score method. The experiments are conducted on publicly available shape datasets like Kimia-99, Kimia-216 and MPEG-7. The comparative study is also provided with the well known approaches to exhibit the retrieval accuracy of the proposed approach.