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An improved algorithm for salient object detection of microscope based on U-Net. | LitMetric

AI Article Synopsis

  • Modern microscopy imaging systems are essential for medical image analysis, yet manual use can lead to issues like inefficiency and operator bias.
  • This paper introduces an enhanced U-Net salient object detection algorithm that utilizes deep learning to improve the extraction of key information and streamline complex network operations.
  • The resulting model is 56.85% smaller than the original U-Net, with increased accuracy from 92.24% to 97.13%, making it more effective for medical image processing and analysis.

Article Abstract

With the rapid advancement of modern medical technology, microscopy imaging systems have become one of the key technologies in medical image analysis. However, manual use of microscopes presents issues such as operator dependency, inefficiency, and time consumption. To enhance the efficiency and accuracy of medical image capture and reduce the burden of subsequent quantitative analysis, this paper proposes an improved microscope salient object detection algorithm based on U-Net, incorporating deep learning technology. The improved algorithm first enhances the network's key information extraction capability by incorporating the Convolutional Block Attention Module (CBAM) into U-Net. It then optimizes network complexity by constructing a Simple Pyramid Pooling Module (SPPM) and uses Ghost convolution to achieve model lightweighting. Additionally, data augmentation is applied to the slides to improve the algorithm's robustness and generalization. The experimental results show that the size of the improved algorithm model is 72.5 MB, which represents a 56.85% reduction compared to the original U-Net model size of 168.0 MB. Additionally, the model's prediction accuracy has increased from 92.24 to 97.13%, providing an efficient means for subsequent image processing and analysis tasks in microscopy imaging systems.

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Source
http://dx.doi.org/10.1007/s11517-024-03205-wDOI Listing

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