Title :
Multi-source image auto-annotation
Author :
Zijia Lin ; Guiguang Ding ; Mingqing Hu
Author_Institution :
Dept. of Comput. Sci. & Technol., Tsinghua Univ., Beijing, China
Abstract :
Though the field of image auto-annotation has been extensively researched, most previous work concentrated on the single-source problem, assuming that both labelled and unseen to-be-annotated images are from a single source (e.g. an identical website), while in practice they are generally collected from multiple sources (e.g. different websites). In that case, treating each source independently may suffer from the insufficiency of labelled data for model training, while merging with labelled images from other sources can bring risky biases to the source-specific model. In this paper, we propose a multi-task learning model to alleviate the multi-source image auto-annotation problem, with each task defined as performing auto-annotation for the corresponding source. Specifically, the proposed model trains annotation models for all sources in parallel with the introduction of inter-source structure regularizers and parameter constraints for sharing information and enhancing the overall performance. Experiments conducted on three different-source benchmark datasets and their combinations yield inspiring results and demonstrate that the proposed model can well utilize the shared information and relieve the risky biases.
Keywords :
image processing; learning (artificial intelligence); annotation models; information sharing; intersource structure regularizers; labelled data; labelled to-be-annotated images; model training; multisource image auto-annotation; multitask learning model; parameter constraints; risky biases; source-specific model; unseen to-be-annotated images; inter-source structure regularizers; multi-source image annotation; multitask learning;
Conference_Titel :
Image Processing (ICIP), 2013 20th IEEE International Conference on
Conference_Location :
Melbourne, VIC
DOI :
10.1109/ICIP.2013.6738529