摘要

Local descriptors are the ground layer of recognition feature based systems for still images and video. We propose a new framework for the design of local descriptors and their evaluation. This framework is based on the descriptors decomposition in three levels: primitive extraction, primitive coding and code aggregation. With this framework, we are able to explain most of the popular descriptors in the literature such as HOG, HOF or SURF. This framework provides an efficient and rigorous approach for the evaluation of local descriptors, and allows us to uncover the best parameters for each descriptor family. Moreover, we are able to extend usual descriptors by changing the code aggregation or adding new primitive coding method. The experiments are carried out on images (VOC 2007) and videos datasets (KTH, Hollywood2, UCF11 and UCF101), and achieve equal or better performances than the literature.

  • 出版日期2015-4
  • 单位INRIA