Yang Zhao, Gao Jun, Xie Zhao, Wu Kewei. Scene categorization of local Gist feature match kernel[J]. Journal of Image and Graphics, 2013, 18(3): 264-270. DOI: 10.11834/jig.20130303.
Due to the coarse fineness of global Gist features in scene categorization tasks
we propose a local Gist feature description based on a dense grid. It uses a spatial pyramid structure to add distribution information and introduces the RGB color space to add color information. The feature matching process is kernelized by an efficient match kernel which mea-sures the similarity between local features based on the BOW model. The scene categorization task can be done with linear SVM. Experiment shows the influence to the classification accuracy with local Gist features which have different scale
orientation
fineness
match kernels and numbers of training samples. By using the classification result of the global Gist feature and dense SIFT features on the OT scene dataset
we demonstrate that the proposed feature construction method and classification model are efficient.