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Research Article

Multiple factors influence coal and gangue image recognition method and experimental research based on deep learning

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Pages 1411-1427 | Received 26 May 2022, Accepted 18 Aug 2022, Published online: 05 Sep 2022
 

ABSTRACT

As for image-based recognition of coal and gangue, the image features are susceptible to the environment, which makes coal and gangue difficult to recognize and locate. We build a simulation experiment platform and construct an image dataset covering the scenarios of different illuminance, moisture, and belt speed. Moreover, in a combination of the YOLOv4 target detection algorithm and a mixed domain attention mechanism, we develop a detection model trained using our dataset. The recognition accuracy of coal, gangue, and coal and gangue combined are 98.2%, 99.0%, and 97.3%, respectively, and the recognition time was 32 ms. We then design an orthogonal experiment of coal and gangue recognition under the influence of three factors (illuminance, moisture content, and belt speed) and four levels and a range analysis. As a result, we obtain the weight sequence and the optimal combination of three factors. The experimental results show that moisture content has the highest influence on weight on recognition accuracy, followed by illuminance and belt speed. We further build the practical working condition simulation experiment platform and choose the illuminance to 4000lux, moisture content to 0.6%, and belt speed to 0.4 m/s to evaluate the recognition and location of coal and gangue on a moving belt. The recognition accuracy of coal, gangue, and the combination are 96%, 98% and 95%, respectively. The average location error of the X and Y coordinate is 5.6 mm and 7.3 mm, respectively.

Acknowledgments

The authors would like to acknowledge the Projects funded by the National natural science foundation of China (Grant No.51834006), the Projects of Shaanxi Provincial Science and Technology Department (Grant No.2018GY-039).

Disclosure statement

No potential conflict of interest was reported by the author(s).

Additional information

Funding

The work was supported by the National Natural Science Foundation of China [No.51834006]; Projects of Shaanxi Provincial Science and Technology Department [No.2018GY-039]

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