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Extended Joint Deep Learning for Pedestrian Detection

Authors
Jo, Dae jinYang, Hyeon seokYoung Shik Moon
Issue Date
Aug-2016
Publisher
International ASET
Keywords
pedestrian detection; deep learning; unified deep network; ensemble learning
Citation
3rd International Conference on Machine Vision and Machine Learning (MVML'16), pp 1 - 7
Pages
7
Indexed
OTHER
Journal Title
3rd International Conference on Machine Vision and Machine Learning (MVML'16)
Start Page
1
End Page
7
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/13102
DOI
10.11159/mvml16.109
Abstract
In this paper, we propose an extended version of Unified Deep Network (UDN). The Extended UDN (EUDN) uses multiple deformation models that operate independently of each other and mixture of the responses of the models to estimate the detection label. The deformation models of the EUDN jointly learned in order to complement each other through penalized in-diversity loss measured from the average correlation between the models. In our experiments, we show that combining independently the deformation models (which are even if worse than existing one) reduces the error in the manner similar to the ensemble learning, and considering diversity of the individual models is more effective without considering diversity. Our approach is evaluated on the Caltech datasets and achieves better performance than the UDN.
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