Research on Application of the Feature Transfer Method Based on Fast R-CNN in Smoke Image Recognition

Author:

Cheng Xi1ORCID

Affiliation:

1. Sichuan University of Arts and Science, Dazhou 635000, China

Abstract

Most of the existing smoke detection methods are based on manual operation, which is difficult to meet the needs of fire monitoring. To further improve the accuracy of smoke detection, an automatic feature extraction and classification method based on fast regional convolution neural network (fast R–CNN) was introduced in the study. This method uses a selective search algorithm to obtain the candidate images of the sample images. The preselected area coordinates and the sample image of visual task are used as network learning. During the training process, we use the feature migration method to avoid the lack of smoke data or limited data sources. Finally, a target detection model is obtained, which is strongly related to a specified visual task, and it has well-trained weight parameters. Experimental results show that this method not only improves the detection accuracy but also effectively reduces the false alarm rate. It can not only meet the real time and accuracy of fire detection but also realize effective fire detection. Compared with similar fire detection algorithms, the improved algorithm proposed in this paper has better robustness to fire detection and has better performance in accuracy and speed.

Publisher

Hindawi Limited

Subject

General Computer Science

Reference27 articles.

1. A Study on the Verification Scheme for Electrical Circuit Analysis of Fire Hazard Analysis in Nuclear Power Plant

2. Smoke recognition based on deep transfer learning;W. Wang;Journal of Computer Applications,2017

3. Small fire smoke region location and recognition in satellite image;S. Miao

4. Smoke image recognition based on local binary pattern;T. Tang

5. Smoke sensor using mass controlled layer-by-layer self-assembly of polyelectrolytes films

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