MUREN: MUltistage Recursive Enhanced Network for Coal-Fired Power Plant Detection

Author:

Yuan Shuai1ORCID,Zheng Juepeng23ORCID,Zhang Lixian23ORCID,Dong Runmin23,Cheung Ray C. C.1,Fu Haohuan23

Affiliation:

1. Department of Electrical Engineering, City University of Hong Kong, Hong Kong 999077, China

2. Ministry of Education Key Laboratory for Earth System Modeling, Department of Earth System Science, Tsinghua University, Beijing 100084, China

3. Department of Earth System Science, Tsinghua University—Xi’an Institute of Surveying and Mapping Joint Research Center for Next-Generation Smart Mapping, Beijing 100084, China

Abstract

The accurate detection of coal-fired power plants (CFPPs) is meaningful for environmental protection, while challenging. The CFPP is a complex combination of multiple components with varying layouts, unlike clearly defined single objects, such as vehicles. CFPPs are typically located in industrial districts with similar backgrounds, further complicating the detection task. To address this issue, we propose a MUltistage Recursive Enhanced Detection Network (MUREN) for accurate and efficient CFPP detection. The effectiveness of MUREN lies in the following: First, we design a symmetrically enhanced module, including a spatial-enhanced subnetwork (SEN) and a channel-enhanced subnetwork (CEN). SEN learns the spatial relationships to obtain spatial context information. CEN provides adaptive channel recalibration, restraining noise disturbance and highlighting CFPP features. Second, we use a recursive construction set on top of feature pyramid networks to receive features more than once, strengthening feature learning for relatively small CFPPs. We conduct comparative and ablation experiments in two datasets and apply MUREN to the Pearl River Delta region in Guangdong province for CFPP detection. The comparative experiment results show that MUREN improves the mAP by 5.98% compared with the baseline method and outperforms by 4.57–21.38% the existing cutting-edge detection methods, which indicates the promising potential of MUREN in large-scale CFPP detection scenarios.

Funder

CityU Research

the National Key Research and Development Plan of China

the National Natural Science Foundation of China

the Jiangsu Innovation Capacity Building Program

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

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3. CO-Detector: Towards Complex Object Detection with Cross-Part Feature Learning in Remote Sensing;IGARSS 2023 - 2023 IEEE International Geoscience and Remote Sensing Symposium;2023-07-16

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