To address issues such as misdetection and omission due to low light, image defocus, and worker occlusion in coal-rock image recognition, a new method called YOLOv8-Coal, based on YOLOv8, is introduced to enhance recognition accuracy and processing speed. The Deformable Convolution Network version 3 enhances object feature extraction by adjusting sampling positions with offsets and aligning them closely with the object's shape. The Polarized Self-Attention module in the feature fusion network emphasizes crucial features and suppresses unnecessary information to minimize irrelevant factors. Additionally, the lightweight C2fGhost module combines the strengths of GhostNet and the C2f module, further decreasing model parameters and computational load. The empirical findings indicate that YOLOv8-Coal has achieved substantial enhancements in all metrics on the coal rock image dataset. More precisely, the values for AP, AP, and AR were improved to 77.7%, 62.8%, and 75.0% respectively. In addition, (oLRP) were decreased to 45.6%. In addition, the model parameters were decreased to 2.59M and the FLOPs were reduced to 6.9G. Finally, the size of the model weight file is a mere 5.2 MB. The enhanced algorithm's advantage is further demonstrated when compared to other commonly used algorithms.
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http://dx.doi.org/10.7717/peerj-cs.2313 | DOI Listing |
ACS Omega
October 2024
Anhui Engineering Laboratory of Explosive Materials and Technology of Anhui University of Science and Technology, Huainan, Anhui 232001, China.
Sci Rep
October 2024
School of Mechanical Engineering, Heilongjiang University of Science & Technology, Harbin, 150022, China.
Due to the harsh underground environment during coal mining, the quality of images collected by cameras is not sufficient, and the acquired images are greatly affected by noise, affecting visual observation; to a certain extent, subsequent intelligent mining is limited. A morphological Sobel coal-rock boundary recognition algorithm is proposed according to the different gray levels of coal-rock images to solve the problem of coal image quality. First, the details of the coal and rock images are smoothly preprocessed to improve the contrast between the feature boundaries and surrounding pixels, and the gray-level adaptive threshold is applied after processing.
View Article and Find Full Text PDFPeerJ Comput Sci
September 2024
College of Science, Heilongjiang University of Science and Technology, Harbin, Heilongjiang, China.
To address issues such as misdetection and omission due to low light, image defocus, and worker occlusion in coal-rock image recognition, a new method called YOLOv8-Coal, based on YOLOv8, is introduced to enhance recognition accuracy and processing speed. The Deformable Convolution Network version 3 enhances object feature extraction by adjusting sampling positions with offsets and aligning them closely with the object's shape. The Polarized Self-Attention module in the feature fusion network emphasizes crucial features and suppresses unnecessary information to minimize irrelevant factors.
View Article and Find Full Text PDFSci Rep
June 2024
College of Safety Science and Engineering, Henan Polytechnic University, Jiaozuo, 454003, China.
To investigate the characteristics of destabilization damage in coal-rock complexes. Mechanical property tests were conducted on coal, rock, and their complexes. An infrared thermal camera was employed to real-time monitor the infrared (IR) radiation response signals during the destabilization damage process.
View Article and Find Full Text PDFSci Rep
June 2024
School of Civil Engineering and Architecture, Hubei University of Arts and Science, Xiangyang, 441053, Hubei, China.
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