Author:
Liu Jingyi,Zhang Hanquan,Xiao Dong
Abstract
AbstractThis paper presents an improved Fast-Segmentation Convolutional Neural Network (Fast-SCNN) and U-Net networks based on the channel attention mechanism. While ensuring the speed of network detection, the accuracy of image segmentation is also considered. The experimental results show that the accuracy rate of improved Fast-SCNN based on the channel attention mechanism is greatly improved compared with the original Fast-SCNN, reaching 88.056%, and the mean intersection over union is also improved to a certain extent, reaching 81.087%, and the detection speed is better than the original Fast-SCNN network. The accuracy of improved U-Net network based on the channel attention mechanism is 0.91805, which is better than the original U-Net network. In terms of detection speed, the improved U-Net network based on channel attention mechanism has greatly improved compared with the original U-Net network, reaching 24.02 frames per second. In addition, a method of preventing clogging of ore conveyor belts based on static image detection is proposed in this paper. By judging and predicting the blockage of the ore conveyor belt. When the conveyor belt is about to be blocked or has been blocked, the fuzzy algorithm is used to control the ore conveyor belt to slow down and stop, to improve the safety and efficiency of the conveyor belt.
Funder
National Key Research and Development Program of China
National Natural Science Foundation of China
Liaoning Revitalization Talents Program, China
Publisher
Springer Science and Business Media LLC
Reference30 articles.
1. Guo, Q. et al. A method of blasted rock image segmentation based on improved watershed algorithm. Sci. Rep. 12, 7143 (2022).
2. Jiao, Wu. Full flow control technology of material conveying in bulk terminal. Port Load. Unload. 1, 60–62 (2020) (In Chinese).
3. Huang, H., Cai, P., Jia, W. & Zhang, Y. Identification of Pb–Zn ore under the condition of low count rate detection of slim hole based on PGNAA technology. Nucl. Eng. Technol. https://doi.org/10.1016/j.net.2023.01.005 (2023).
4. Lu, S. & Huang, S. A mesoscale endpoint predictive model of ore grinding particle size. In 2019 IEEE 17th International Conference on Industrial Informatics (INDIN), Helsinki, Finland 603–606 (2019).
5. Petruk, W., Pinard, R. G. & Finch, J. Relationship between observed mineral liberations in screened fractions and in composite samples. Min. Metall. Explor. 3(1), 60–62 (1986).