Visible to the public Identify Visual Human Signature in community via wearable camera

TitleIdentify Visual Human Signature in community via wearable camera
Publication TypeConference Paper
Year of Publication2015
AuthorsTsao, Chia-Chin, Chen, Yan-Ying, Hou, Yu-Lin, Hsu, Winston H.
Conference Name2015 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP)
KeywordsCameras, Clothing, clothing attributes, Communities, Databases, Face, facial appearance, facial attributes, feature extraction, Human Attributes, image recognition, information sharing, MCID, multiview celebrity identity dataset, pubcrawl170113, Robustness, security of data, sensor fusion, VHS recognition, visual human signature, visual patches, visualization, wearable camera, wearable computers, Wearable Device, wearable devices, Weighted Voting, weighted voting fusion
Abstract

With the increasing popularity of wearable devices, information becomes much easily available. However, personal information sharing still poses great challenges because of privacy issues. We propose an idea of Visual Human Signature (VHS) which can represent each person uniquely even captured in different views/poses by wearable cameras. We evaluate the performance of multiple effective modalities for recognizing an identity, including facial appearance, visual patches, facial attributes and clothing attributes. We propose to emphasize significant dimensions and do weighted voting fusion for incorporating the modalities to improve the VHS recognition. By jointly considering multiple modalities, the VHS recognition rate can reach by 51% in frontal images and 48% in the more challenging environment and our approach can surpass the baseline with average fusion by 25% and 16%. We also introduce Multiview Celebrity Identity Dataset (MCID), a new dataset containing hundreds of identities with different view and clothing for comprehensive evaluation.

DOI10.1109/ICASSP.2015.7178367
Citation Keytsao_identify_2015