Abstract:To solve the problem that it is difficult for a single neural network to capture complex and deep capacitance vector features in the process of capacitance tomography image reconstruction, a electrical capacitance tomography image reconstruction algorithm (BSFF) based on squeeze-and-excitation networks(SENet) dual-path multi-scale feature fusion was proposed. Firstly, a multi-scale dense deep cavity convolution module was constructed to obtain a larger local receptive field and maintain a lower computational complexity, and multi-scale feature fusion was achieved to capture the multi-scale detail features of capacitance vector to enhance the representation ability of the model. Secondly, residual neural network is used to solve the degradation phenomenon in feature extraction of deep network, and SENet module is added to recalibrate the corresponding weight of the channel which the capacitance feature tensor belongs and calibrate the feature response. Finally, a two-channel multi-feature fusion hybrid model with bidirectional feature extraction capability is formed to better fit the nonlinear mapping relationship between capacitance tensor and dielectric constant. The Experimental results show that BSFF algorithm has higher image reconstruction quality and better robustness than Landweber iterative algorithm and CNN algorithm.
马敏,李继伟. 基于SENet双路径多尺度特征融合的ECT图像重建[J]. 振动与冲击, 2023, 42(7): 180-186.
MA Min, LI Jiwei. ECT Image Reconstruction algorithm based on SENet dual-path multi-scale feature fusion. JOURNAL OF VIBRATION AND SHOCK, 2023, 42(7): 180-186.
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