Region-dependent vehicle classification using PCA features

Jon Arrospide, Luis Salgado
2012 2012 19th IEEE International Conference on Image Processing  
Video-based vehicle detection is the focus of increasing interest due to its potential towards collision avoidance. In particular, vehicle verification is especially challenging due to the enormous variability of vehicles in size, color, pose, etc. In this paper, a new approach based on supervised learning using Principal Component Analysis (PCA) is proposed that addresses the main limitations of existing methods. Namely, in contrast to classical approaches which train a single classifier
more » ... less of the relative position of the candidate (thus ignoring valuable pose information), a regiondependent analysis is performed by considering four different areas. In addition, a study on the evolution of the classification performance according to the dimensionality of the principal subspace is carried out using PCA features within a SVM-based classification scheme. Indeed, the experiments performed on a publicly available database prove that PCA dimensionality requirements are region-dependent. Hence, in this work, the optimal configuration is adapted to each of them, rendering very good vehicle verification results.
doi:10.1109/icip.2012.6466894 dblp:conf/icip/ArrospideS12 fatcat:l6paob653na4jhyhp2nr4skujq