DocumentCode :
3423394
Title :
Collaborative Active Learning of a Kernel Machine Ensemble for Recognition
Author :
Gang Hua ; Chengjiang Long ; Ming Yang ; Yan Gao
Author_Institution :
Stevens Inst. of Technol., Hoboken, NJ, USA
fYear :
2013
fDate :
1-8 Dec. 2013
Firstpage :
1209
Lastpage :
1216
Abstract :
Active learning is an effective way of engaging users to interactively train models for visual recognition. The vast majority of previous works, if not all of them, focused on active learning with a single human oracle. The problem of active learning with multiple oracles in a collaborative setting has not been well explored. Moreover, most of the previous works assume that the labels provided by the human oracles are noise free, which may often be violated in reality. We present a collaborative computational model for active learning with multiple human oracles. It leads to not only an ensemble kernel machine that is robust to label noises, but also a principled label quality measure to online detect irresponsible labelers. Instead of running independent active learning processes for each individual human oracle, our model captures the inherent correlations among the labelers through shared data among them. Our simulation experiments and experiments with real crowd-sourced noisy labels demonstrated the efficacy of our model.
Keywords :
lead compounds; learning (artificial intelligence); collaborative active learning; collaborative computational model; ensemble kernel machine; human oracles; individual human oracle; kernel machine ensemble; model training; real crowd-sourced noisy labels; visual recognition; Collaboration; Data models; Kernel; Labeling; Noise; Noise measurement; Visualization; Active Learning; Crowdsourcing; Kernel Machine Ensemble; Visual Recognition;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision (ICCV), 2013 IEEE International Conference on
Conference_Location :
Sydney, VIC
ISSN :
1550-5499
Type :
conf
DOI :
10.1109/ICCV.2013.153
Filename :
6751260
Link To Document :
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