Reinforced AdaBoost Learning for Object Detection with Local Pattern Representations

Author:

Lee Younghyun1ORCID,Han David K.2,Ko Hanseok3ORCID

Affiliation:

1. Department of Visual Information Processing, Korea University, Anam-dong, Seongbuk-gu, Seoul 136-713, Republic of Korea

2. Office of Naval Research, Arlington, VA 22203, USA

3. School of Electrical Engineering, Korea University, Engineering Buliding, Room 419, Anam-dong, Seongbuk-gu, Seoul 136-713, Republic of Korea

Abstract

A reinforced AdaBoost learning algorithm is proposed for object detection with local pattern representations. In implementing Adaboost learning, the proposed algorithm employs an exponential criterion as a cost function and Newton’s method for its optimization. In particular, we introduce an optimal selection of weak classifiers minimizing the cost function and derive the reinforced predictions based on a judicial confidence estimate to determine the classification results. The weak classifier of the proposed method produces real-valued predictions while that of the conventional Adaboost method produces integer valued predictions of +1 or −1. Hence, in the conventional learning algorithms, the entire sample weights are updated by the same rate. On the contrary, the proposed learning algorithm allows the sample weights to be updated individually depending on the confidence level of each weak classifier prediction, thereby reducing the number of weak classifier iterations for convergence. Experimental classification performance on human face and license plate images confirm that the proposed method requires smaller number of weak classifiers than the conventional learning algorithm, resulting in higher learning and faster classification rates. An object detector implemented based on the proposed learning algorithm yields better performance in field tests in terms of higher detection rate with lower false positives than that of the conventional learning algorithm.

Funder

Seoul R&BD Program

Publisher

Hindawi Limited

Subject

General Environmental Science,General Biochemistry, Genetics and Molecular Biology,General Medicine

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