%0 Thesis %T Hierarchical Multiresolution Models for fast Object Detection %A Marco Pedersoli %E Jordi Gonzalez %E Xavier Roca %D 2012 %I Ediciones Graficas Rey %F Marco Pedersoli2012 %O ISE %O exported from refbase (http://refbase.cvc.uab.es/show.php?record=2203), last updated on Fri, 17 Dec 2021 11:12:08 +0100 %X The ability to automatically detect and recognize objects in unconstrained images is becoming more and more critical: from security systems and autonomous robots, to smart phones and augmented reality, intelligent devices need to understand the meaning of images as a composition of semantic objects. This Thesis tackles the problem of fast object detection based on template models. Detection consists of searching for an object in an image by evaluating the similarity between a template model and an image region at each possible location and scale. In this work, we show that using a template model representation based on a multiple resolution hierarchy is an optimal choice that can lead to excellent detection accuracy and fast computation. We implement two different approaches that make use of a hierarchy of multiresolution models: a multiresolution cascade and a coarse-to-fine search. Also, we extend the coarse-to-fine search by introducing a deformable part-based model that achieves state-of-the-art results together with a very reduced computational cost. Finally, we specialize our approach to the challenging task of pedestrian detection from moving vehicles and show that the overall quality of the system outperforms previous works in terms of speed and accuracy. %9 theses %9 Ph.D. thesis