An Identification Method for Mixed Coal Vitrinite Components Based on An Improved DeepLabv3+ Network

Energies Pub Date : 2024-07-13 DOI:10.3390/en17143453
Fujie Wang, Fanfan Li, Wei Sun, Xiaozhong Song, Huishan Lu
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Abstract

To address the high complexity and low accuracy issues of traditional methods in mixed coal vitrinite identification, this paper proposes a method based on an improved DeepLabv3+ network. First, MobileNetV2 is used as the backbone network to reduce the number of parameters. Second, an atrous convolution layer with a dilation rate of 24 is added to the ASPP (atrous spatial pyramid pooling) module to further increase the receptive field. Meanwhile, a CBAM (convolutional block attention module) attention mechanism with a channel multiplier of 8 is introduced at the output part of the ASPP module to better filter out important semantic features. Then, a corrective convolution module is added to the network’s output to ensure the consistency of each channel’s output feature map for each type of vitrinite. Finally, images of 14 single vitrinite components are used as training samples for network training, and a validation set is used for identification testing. The results show that the improved DeepLabv3+ achieves 6.14% and 3.68% improvements in MIOU (mean intersection over union) and MPA (mean pixel accuracy), respectively, compared to the original DeepLabv3+; 12% and 5.3% improvements compared to U-Net; 9.26% and 4.73% improvements compared to PSPNet with ResNet as the backbone; 5.4% and 9.34% improvements compared to PSPNet with MobileNetV2 as the backbone; and 6.46% and 9.05% improvements compared to HRNet. Additionally, the improved ASPP module increases MIOU and MPA by 3.23% and 1.93%, respectively, compared to the original module. The CBAM attention mechanism with a channel multiplier of 8 improves MIOU and MPA by 1.97% and 1.72%, respectively, compared to the original channel multiplier of 16. The data indicate that the proposed identification method significantly improves recognition accuracy and can be effectively applied to mixed coal vitrinite identification.
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基于改进型 DeepLabv3+ 网络的混合煤钒成分识别方法
针对传统方法在混合煤矾石识别中存在的复杂度高、精度低等问题,本文提出了一种基于改进的 DeepLabv3+ 网络的方法。首先,使用 MobileNetV2 作为骨干网络,以减少参数数量。其次,在 ASPP(atrous spatial pyramid pooling,atrous 空间金字塔池化)模块中加入了扩张率为 24 的atrous 卷积层,以进一步增加感受野。同时,在 ASPP 模块的输出部分引入了通道乘数为 8 的 CBAM(卷积块注意模块)注意机制,以更好地过滤出重要的语义特征。然后,在网络的输出端添加了一个校正卷积模块,以确保每种类型的玻璃石的每个通道输出特征图的一致性。最后,将 14 个单一玻璃纤维成分的图像作为训练样本进行网络训练,并使用验证集进行识别测试。结果表明,与原始 DeepLabv3+ 相比,改进后的 DeepLabv3+ 在 MIOU(平均交集大于联合)和 MPA(平均像素精度)方面分别提高了 6.14% 和 3.68%;与 U-Net 相比,分别提高了 12% 和 5.与 U-Net 相比,分别提高了 12% 和 5.3%;与以 ResNet 为骨干的 PSPNet 相比,分别提高了 9.26% 和 4.73%;与以 MobileNetV2 为骨干的 PSPNet 相比,分别提高了 5.4% 和 9.34%;与 HRNet 相比,分别提高了 6.46% 和 9.05%。此外,改进后的 ASPP 模块与原始模块相比,MIOU 和 MPA 分别提高了 3.23% 和 1.93%。通道乘数为 8 的 CBAM 注意机制与原始通道乘数 16 相比,MIOU 和 MPA 分别提高了 1.97% 和 1.72%。数据表明,所提出的识别方法显著提高了识别准确率,可以有效地应用于混合煤矾石的识别。
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