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Model selection in pedestrian detection using multiple kernel learning
2007
IEEE Intelligent Vehicles Symposium
This paper presents a pedestrian detection method based on the multiple kernel framework. This approach enables us to select and combine different kinds of image representations. The combination is done through a linear combination of kernels, weighted according to the relevance of kernels. After having presented some descriptors and detailed the multiple kernel framework, we propose three different applications concerning combination of representations, automatic parameters setting and feature
doi:10.1109/ivs.2007.4290126
fatcat:l2f7qaevyreplbnp272fhq75km