학술논문

Unsupervised Scene Adaptation for Faster Multi-scale Pedestrian Detection
Document Type
Conference
Source
2014 22nd International Conference on Pattern Recognition Pattern Recognition (ICPR), 2014 22nd International Conference on. :3534-3539 Aug, 2014
Subject
Computing and Processing
Detectors
Approximation methods
Proposals
Accuracy
Geometry
Positron emission tomography
Feature extraction
Language
ISSN
1051-4651
Abstract
In this paper we describe an approach to automatically improving the efficiency of soft cascade-based person detectors. Our technique addresses the two fundamental bottlenecks in cascade detectors: the number of weak classifiers that need to be evaluated in each cascade, and the total number of detection windows to be evaluated. By simply observing a soft cascade operating on a scene, we learn scale specific linear approximations of cascade traces that allows us to eliminate a large fraction of the classifier evaluation. Independently, this time by observing regions of support in the soft cascade on a training set, we learn a coarse geometric model of the scene that allows our detector to propose candidate detection windows and significantly reduce the number of windows run through the cascade. Our approaches are unsupervised and require no additional labeled person images for learning. Our linear cascade approximation results in about 28% savings in detection, while our geometric model gives a saving of over 95%, without appreciable loss of accuracy.