Abstract

Recently, air quality analysis based on image sensing devices has attracted much attention. Since most smoke images in real scenes have challenging variances, which is difficult for existing object detection methods. To keep real-time factory smoke under efficient and universal social supervision, this paper proposes a mobile-platform-running efficient smoke detection algorithm based on image analysis techniques. We introduce the two-stage smoke detection (TSSD) algorithm based on the lightweight detection framework, in which the prior knowledge and contextual information are modeled into the relation-guided module to reduce the smoke search space, which can therefore significantly improve the performance of the single-stage method. Experimental results show that the proposed TSSD algorithm can robustly improve the detection accuracy of the single-stage method and the model has good compatibility for image resolution inputs. Compared with various state-of-the-art detection methods, the accuracy AP_{mean} of our proposed TSSD model reaches 59.24%, even surpassing the current detection model Faster RCNN. In addition, the detection speed of our proposed model can reach 50 ms (20 FPS), meeting the real-time requirements. This knowledge-based system has the advantages of high stability, high accuracy, fast detection speed. It can be widely used in some scenes with smoke detection requirements, such as on the mobile terminal carrier, providing great potential for practical environmental applications.

Highlights

  • Air quality analysis based on image sensing devices has attracted much attention

  • The performances of two-stage smoke detection (TSSD) algorithm and compared methods are evaluated by the following metrics: Average precision (AP)

  • To fairly compare TSSD algorithm with mainstream object detection methods, we refer to the evaluation m­ etric[36] on the COCO ­dataset[37] and mark the mean of AP@50∼AP@95 as APmean

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Summary

Introduction

Air quality analysis based on image sensing devices has attracted much attention. To keep real-time factory smoke under efficient and universal social supervision, this paper proposes a mobile-platform-running efficient smoke detection algorithm based on image analysis techniques. The detection speed of our proposed model can reach 50 ms (20 FPS), meeting the real-time requirements This knowledge-based system has the advantages of high stability, high accuracy, fast detection speed. Environmental protection departments usually use online continuous emission monitoring system (CEMS)[1] to measure the concentrations of some gases (such as sulfur dioxide, nitrogen oxides) and solid particles in smoke online, monitor the status of factory smoke pollution emissions Such specific monitoring results are not accessible to common people. To address above problem and achieve efficient smoke detection, we make use of the computer vision methods and propose an efficient algorithm which can locate and identify factory smoke real-timely and accurately by pictures taken by mobile phones. Chen et al.[6] gives a useful image inpainting algorithm, using known information to restore the noisy images

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