WANG Man-long, HE Xiao-hai, GONG Jian, et al. Microscopic Displacement Image Classification Based on Deep Learning[J]. New Generation of Information Technology, 2023, 6(16): 14-20
WANG Man-long, HE Xiao-hai, GONG Jian, et al. Microscopic Displacement Image Classification Based on Deep Learning[J]. New Generation of Information Technology, 2023, 6(16): 14-20 DOI: 10.3969/j.issn.2096-6091.2023.16.003.
Microscopic Displacement Image Classification Based on Deep Learning
The microscopic displacement experiment is an essential techniques for studying and analyzing displacement mechanisms. To investigate the efficiency
coverage area
and variations of different displacement agents
accurate analysis is required. The current method of extracting displacement agents relies on manual interaction through color threshold segmentation
which is both labor-intensive and yields imprecise classification results. Addressing these issues
this paper proposes a displacement agent classification algorithm based on deep learning. The core architecture of the proposed model is UNet++
which integrates features from different hierarchical levels. At the end of the encoding phase
a spatial pyramid structure is embedded
and an attention mechanism is introduced to prevent the loss of pixel-level information
thus enhancing the accuracy of feature extraction. Experimental results on multiple sets of images demonstrate that the proposed method achieves excellent classification performance.
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