Title :
Cross-Domain Person Reidentification Using Domain Adaptation Ranking SVMs
Author :
Ma, Andy J. ; Jiawei Li ; Yuen, Pong C. ; Ping Li
Author_Institution :
Dept. of Comput. Sci., Johns Hopkins Univ., Baltimore, MD, USA
Abstract :
This paper addresses a new person reidentification problem without label information of persons under nonoverlapping target cameras. Given the matched (positive) and unmatched (negative) image pairs from source domain cameras, as well as unmatched (negative) and unlabeled image pairs from target domain cameras, we propose an adaptive ranking support vector machines (AdaRSVMs) method for reidentification under target domain cameras without person labels. To overcome the problems introduced due to the absence of matched (positive) image pairs in the target domain, we relax the discriminative constraint to a necessary condition only relying on the positive mean in the target domain. To estimate the target positive mean, we make use of all the available data from source and target domains as well as constraints in person reidentification. Inspired by adaptive learning methods, a new discriminative model with high confidence in target positive mean and low confidence in target negative image pairs is developed by refining the distance model learnt from the source domain. Experimental results show that the proposed AdaRSVM outperforms existing supervised or unsupervised, learning or non-learning reidentification methods without using label information in target cameras. Moreover, our method achieves better reidentification performance than existing domain adaptation methods derived under equal conditional probability assumption.
Keywords :
cameras; image matching; learning (artificial intelligence); support vector machines; AdaRSVM; adaptive learning methods; adaptive ranking support vector machines; cross-domain person reidentification; discriminative constraint; discriminative model; domain adaptation ranking SVM; matched image pairs; negative image pairs; nonoverlapping target cameras; positive image pairs; source domain cameras; target domain cameras; target positive mean estimation; unlabeled image pairs; Adaptation models; Cameras; Data models; Equations; Feature extraction; Mathematical model; Vectors; Adaptive Learning; Domain Adaptation; Person Re-Identification; Person re-identification; Ranking SVMs; Target Positive Mean; adaptive learning; domain adaptation; ranking SVMs; target positive mean;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2015.2395715