SparseMask: Differentiable Connectivity Learning for Dense Image Prediction
文献类型:会议论文
作者 | Wu, Huikai1,2![]() ![]() ![]() |
出版日期 | 2019-10 |
会议日期 | 27 Oct.-2 Nov. 2019 |
会议地点 | Seoul, Korea (South) |
页码 | 6767-6776 |
英文摘要 | In this paper, we aim at automatically searching an efficient network architecture for dense image prediction. Particularly, we follow the encoder-decoder style and focus on designing a connectivity structure for the decoder. To achieve that, we design a densely connected network with learnable connections, named Fully Dense Network, which contains a large set of possible final connectivity structures. We then employ gradient descent to search the optimal connectivity from the dense connections. The search process is guided by a novel loss function, which pushes the weight of each connection to be binary and the connections to be sparse. The discovered connectivity achieves competitive results on two segmentation datasets, while runs more than three times faster and requires less than half parameters compared to the state-of-the-art methods. An extensive experiment shows that the discovered connectivity is compatible with various backbones and generalizes well to other dense image prediction tasks. |
源URL | [http://ir.ia.ac.cn/handle/173211/38529] ![]() |
专题 | 智能系统与工程 |
通讯作者 | Huang, Kaiqi |
作者单位 | 1.Institute of Automation, Chinese Academy of Sciences 2.University of Chinese Academy of Sciences |
推荐引用方式 GB/T 7714 | Wu, Huikai,Zhang, Junge,Huang, Kaiqi. SparseMask: Differentiable Connectivity Learning for Dense Image Prediction[C]. 见:. Seoul, Korea (South). 27 Oct.-2 Nov. 2019. |
入库方式: OAI收割
来源:自动化研究所
其他版本
除非特别说明,本系统中所有内容都受版权保护,并保留所有权利。