TY - THES AU - Javier Marin ED - Antonio Lopez ED - Jaume Amores PY - 2013// TI - Pedestrian Detection Based on Local Experts PB - Ediciones Graficas Rey N2 - During the last decade vision-based human detection systems have started to play a key rolein multiple applications linked to driver assistance, surveillance, robot sensing and home automation.Detecting humans is by far one of the most challenging tasks in Computer Vision.This is mainly due to the high degree of variability in the human appearanceassociated tothe clothing, pose, shape and size. Besides, other factors such as cluttered scenarios, partial occlusions, or environmental conditions can make the detection task even harder.Most promising methods of the state-of-the-art rely on discriminative learning paradigms which are fed with positive and negative examples. The training data is one of the mostrelevant elements in order to build a robust detector as it has to cope the large variability of the target. In order to create this dataset human supervision is required. The drawback at this point is the arduous effort of annotating as well as looking for such claimed variability.In this PhD thesis we address two recurrent problems in the literature. In the first stage,we aim to reduce the consuming task of annotating, namely, by using computer graphics.More concretely, we develop a virtual urban scenario for later generating a pedestrian dataset.Then, we train a detector using this dataset, and finally we assess if this detector can be successfully applied in a real scenario.In the second stage, we focus on increasing the robustness of our pedestrian detectorsunder partial occlusions. In particular, we present a novel occlusion handling approach to increase the performance of block-based holistic methods under partial occlusions. For this purpose, we make use of local experts via a RandomSubspaceMethod (RSM) to handle these cases. If the method infers a possible partial occlusion, then the RSM, based on performance statistics obtained from partially occluded data, is applied. The last objective of this thesisis to propose a robust pedestrian detector based on an ensemble of local experts. To achieve this goal, we use the random forest paradigm, where the trees act as ensembles an their nodesare the local experts. In particular, each expert focus on performing a robust classification ofa pedestrian body patch. This approach offers computational efficiency and far less design complexity when compared to other state-of-the-artmethods, while reaching better accuracy N1 - ADAS ID - Javier Marin2013 U1 - Ph.D. thesis ER -