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Hyper-class augmented and regularized deep learning for fine-grained image classification

Authors :
Xiaoyu Wang
Yuanqing Lin
Tianbao Yang
Saining Xie
Source :
CVPR
Publication Year :
2015
Publisher :
IEEE, 2015.

Abstract

Deep convolutional neural networks (CNN) have seen tremendous success in large-scale generic object recognition. In comparison with generic object recognition, fine-grained image classification (FGIC) is much more challenging because (i) fine-grained labeled data is much more expensive to acquire (usually requiring domain expertise); (ii) there exists large intra-class and small inter-class variance. Most recent work exploiting deep CNN for image recognition with small training data adopts a simple strategy: pre-train a deep CNN on a large-scale external dataset (e.g., ImageNet) and fine-tune on the small-scale target data to fit the specific classification task. In this paper, beyond the fine-tuning strategy, we propose a systematic framework of learning a deep CNN that addresses the challenges from two new perspectives: (i) identifying easily annotated hyper-classes inherent in the fine-grained data and acquiring a large number of hyper-class-labeled images from readily available external sources (e.g., image search engines), and formulating the problem into multitask learning; (ii) a novel learning model by exploiting a regularization between the fine-grained recognition model and the hyper-class recognition model. We demonstrate the success of the proposed framework on two small-scale fine-grained datasets (Stanford Dogs and Stanford Cars) and on a large-scale car dataset that we collected.

Details

Database :
OpenAIRE
Journal :
2015 IEEE Conference on Computer Vision and Pattern Recognition (CVPR)
Accession number :
edsair.doi...........217f71c08da71b45ed4f24852e5e1449
Full Text :
https://doi.org/10.1109/cvpr.2015.7298880