DocumentCode :
79756
Title :
Toward Open Set Recognition
Author :
Scheirer, Walter J. ; de Rezende Rocha, A. ; Sapkota, Archana ; Boult, Terrance E.
Author_Institution :
Dept. of Mol. & Cellular Biol., Harvard Univ., Cambridge, MA, USA
Volume :
35
Issue :
7
fYear :
2013
fDate :
Jul-13
Firstpage :
1757
Lastpage :
1772
Abstract :
To date, almost all experimental evaluations of machine learning-based recognition algorithms in computer vision have taken the form of “closed set” recognition, whereby all testing classes are known at training time. A more realistic scenario for vision applications is “open set” recognition, where incomplete knowledge of the world is present at training time, and unknown classes can be submitted to an algorithm during testing. This paper explores the nature of open set recognition and formalizes its definition as a constrained minimization problem. The open set recognition problem is not well addressed by existing algorithms because it requires strong generalization. As a step toward a solution, we introduce a novel “1-vs-set machine,” which sculpts a decision space from the marginal distances of a 1-class or binary SVM with a linear kernel. This methodology applies to several different applications in computer vision where open set recognition is a challenging problem, including object recognition and face verification. We consider both in this work, with large scale cross-dataset experiments performed over the Caltech 256 and ImageNet sets, as well as face matching experiments performed over the Labeled Faces in the Wild set. The experiments highlight the effectiveness of machines adapted for open set evaluation compared to existing 1-class and binary SVMs for the same tasks.
Keywords :
computer vision; face recognition; image matching; learning (artificial intelligence); minimisation; support vector machines; 1-class SVM; 1-vs-set machine; Caltech 256 sets; ImageNet sets; binary SVM; closed set recognition; computer vision; constrained minimization problem; decision space; face matching; face verification; labeled faces; large scale cross-dataset; linear kernel; machine learning-based recognition algorithms; marginal distances; object recognition; open set recognition; training time; wild set; Face; Face recognition; Object recognition; Support vector machines; Testing; Training; Training data; 1-vs-set machine; Open set recognition; face verification; machine learning; object recognition; support vector machines; Animals; Biometric Identification; Humans; Image Processing, Computer-Assisted; Pattern Recognition, Automated; Support Vector Machines;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2012.256
Filename :
6365193
Link To Document :
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