English

DeepID-Net: multi-stage and deformable deep convolutional neural networks for object detection

Computer Vision and Pattern Recognition 2014-09-12 v1

Abstract

In this paper, we propose multi-stage and deformable deep convolutional neural networks for object detection. This new deep learning object detection diagram has innovations in multiple aspects. In the proposed new deep architecture, a new deformation constrained pooling (def-pooling) layer models the deformation of object parts with geometric constraint and penalty. With the proposed multi-stage training strategy, multiple classifiers are jointly optimized to process samples at different difficulty levels. A new pre-training strategy is proposed to learn feature representations more suitable for the object detection task and with good generalization capability. By changing the net structures, training strategies, adding and removing some key components in the detection pipeline, a set of models with large diversity are obtained, which significantly improves the effectiveness of modeling averaging. The proposed approach ranked \#2 in ILSVRC 2014. It improves the mean averaged precision obtained by RCNN, which is the state-of-the-art of object detection, from 31%31\% to 45%45\%. Detailed component-wise analysis is also provided through extensive experimental evaluation.

Keywords

Cite

@article{arxiv.1409.3505,
  title  = {DeepID-Net: multi-stage and deformable deep convolutional neural networks for object detection},
  author = {Wanli Ouyang and Ping Luo and Xingyu Zeng and Shi Qiu and Yonglong Tian and Hongsheng Li and Shuo Yang and Zhe Wang and Yuanjun Xiong and Chen Qian and Zhenyao Zhu and Ruohui Wang and Chen-Change Loy and Xiaogang Wang and Xiaoou Tang},
  journal= {arXiv preprint arXiv:1409.3505},
  year   = {2014}
}
R2 v1 2026-06-22T05:54:40.523Z