Asymmetric Pruning for Learning Cascade Detectors
Autor: | Anton van den Hengel, Chunhua Shen, Sakrapee Paisitkriangkrai |
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Rok vydání: | 2014 |
Předmět: |
FOS: Computer and information sciences
Boosting (machine learning) business.industry Computer science Computer Vision and Pattern Recognition (cs.CV) Computer Science - Computer Vision and Pattern Recognition Linear classifier Feature selection Pattern recognition Machine learning computer.software_genre Boosting methods for object categorization Computer Science Applications Discriminative model Cascade Signal Processing Margin classifier Classifier (linguistics) Media Technology Artificial intelligence Electrical and Electronic Engineering business Classifier (UML) computer Cascading classifiers |
Zdroj: | IEEE Transactions on Multimedia. 16:1254-1267 |
ISSN: | 1941-0077 1520-9210 |
DOI: | 10.1109/tmm.2014.2308723 |
Popis: | Cascade classifiers are one of the most important contributions to real-time object detection. Nonetheless, there are many challenging problems arising in training cascade detectors. One common issue is that the node classifier is trained with a symmetric classifier. Having a low misclassification error rate does not guarantee an optimal node learning goal in cascade classifiers, i.e., an extremely high detection rate with a moderate false positive rate. In this work, we present a new approach to train an effective node classifier in a cascade detector. The algorithm is based on two key observations: 1) Redundant weak classifiers can be safely discarded; 2) The final detector should satisfy the asymmetric learning objective of the cascade architecture. To achieve this, we separate the classifier training into two steps: finding a pool of discriminative weak classifiers/features and training the final classifier by pruning weak classifiers which contribute little to the asymmetric learning criterion (asymmetric classifier construction). Our model reduction approach helps accelerate the learning time while achieving the pre-determined learning objective. Experimental results on both face and car data sets verify the effectiveness of the proposed algorithm. On the FDDB face data sets, our approach achieves the state-of-the-art performance, which demonstrates the advantage of our approach. Comment: 14 pages |
Databáze: | OpenAIRE |
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