Title :
A Multilevel Mixture-of-Experts Framework for Pedestrian Classification
Author :
Enzweiler, Markus ; Gavrila, Dariu M.
Author_Institution :
Environ. Perception Dept., Daimler AG Group Res. & MCG Dev., Ulm, Germany
Abstract :
Notwithstanding many years of progress, pedestrian recognition is still a difficult but important problem. We present a novel multilevel Mixture-of-Experts approach to combine information from multiple features and cues with the objective of improved pedestrian classification. On pose-level, shape cues based on Chamfer shape matching provide sample-dependent priors for a certain pedestrian view. On modality-level, we represent each data sample in terms of image intensity, (dense) depth, and (dense) flow. On feature-level, we consider histograms of oriented gradients (HOG) and local binary patterns (LBP). Multilayer perceptrons (MLP) and linear support vector machines (linSVM) are used as expert classifiers. Experiments are performed on a unique real-world multi-modality dataset captured from a moving vehicle in urban traffic. This dataset has been made public for research purposes. Our results show a significant performance boost of up to a factor of 42 in reduction of false positives at constant detection rates of our approach compared to a baseline intensity-only HOG/linSVM approach.
Keywords :
image classification; image matching; multilayer perceptrons; object detection; shape recognition; support vector machines; traffic engineering computing; Chamfer shape matching; HOG; LBP; MLP; depth; flow; histograms of oriented gradients; image intensity; linSVM; linear support vector machines; local binary patterns; multilayer perceptrons; multilevel mixture-of-experts framework; multimodality dataset; pedestrian classification; pedestrian recognition; Cameras; Computational modeling; Optical imaging; Pixel; Shape; Support vector machines; Training; Mixture-of-experts; object detection; pedestrian classification; Cluster Analysis; Fuzzy Logic; Humans; Image Processing, Computer-Assisted; Pattern Recognition, Automated; Support Vector Machines;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2011.2142006