STCNet: Spatio-Temporal Cross Network for Industrial Smoke Detection
- URL: http://arxiv.org/abs/2011.04863v1
- Date: Tue, 10 Nov 2020 02:28:47 GMT
- Title: STCNet: Spatio-Temporal Cross Network for Industrial Smoke Detection
- Authors: Yichao Cao, Qingfei Tang, Xiaobo Lu, Fan Li, and Jinde Cao
- Abstract summary: We propose a novel Spatio-Temporal Cross Network (STCNet) to recognize industrial smoke emissions.
The proposed STCNet involves a spatial to extract texture features and a temporal pathway to capture smoke motion information.
We show that our STCNet achieves clear improvements on the challenging RISE industrial smoke detection dataset against the best competitors by 6.2%.
- Score: 52.648906951532155
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Industrial smoke emissions present a serious threat to natural ecosystems and
human health. Prior works have shown that using computer vision techniques to
identify smoke is a low cost and convenient method. However, industrial smoke
detection is a challenging task because industrial emission particles are often
decay rapidly outside the stacks or facilities and steam is very similar to
smoke. To overcome these problems, a novel Spatio-Temporal Cross Network
(STCNet) is proposed to recognize industrial smoke emissions. The proposed
STCNet involves a spatial pathway to extract texture features and a temporal
pathway to capture smoke motion information. We assume that spatial and
temporal pathway could guide each other. For example, the spatial path can
easily recognize the obvious interference such as trees and buildings, and the
temporal path can highlight the obscure traces of smoke movement. If the two
pathways could guide each other, it will be helpful for the smoke detection
performance. In addition, we design an efficient and concise spatio-temporal
dual pyramid architecture to ensure better fusion of multi-scale spatiotemporal
information. Finally, extensive experiments on public dataset show that our
STCNet achieves clear improvements on the challenging RISE industrial smoke
detection dataset against the best competitors by 6.2%. The code will be
available at: https://github.com/Caoyichao/STCNet.
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