2022 2nd International Conference on Computer Science, Electronic Information Engineering and Intelligent Control Technology (C 2022
DOI: 10.1109/cei57409.2022.9950227
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Research and Construction of Image Classification Model Based on Deep Adaptive Network Method

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“…Liu and Zhang [14] have proposed a method for ore image segmentation of conveyor belt based on U-Net and ResU-Net model to solve the problems of irregular shape, dense accumulation and high complexity of ore image, which has realized accurate segmentation and parameter statistics of ore image. Tan et al [15] have proposed an automatic rock image classification method according to Xception network, which has improved the accuracy of image classification by combining with the idea of migration learning, and rock lithology recognition is more accurate. Ma et al [16] have established a multi-scale model based on the rock micrographic image, which can well identify the rock lithology with an accuracy rate of more than 95%.…”
Section: Introductionmentioning
confidence: 99%
“…Liu and Zhang [14] have proposed a method for ore image segmentation of conveyor belt based on U-Net and ResU-Net model to solve the problems of irregular shape, dense accumulation and high complexity of ore image, which has realized accurate segmentation and parameter statistics of ore image. Tan et al [15] have proposed an automatic rock image classification method according to Xception network, which has improved the accuracy of image classification by combining with the idea of migration learning, and rock lithology recognition is more accurate. Ma et al [16] have established a multi-scale model based on the rock micrographic image, which can well identify the rock lithology with an accuracy rate of more than 95%.…”
Section: Introductionmentioning
confidence: 99%