Publications by authors named "Su-Ran Wang"

In the domain of medical image segmentation, traditional diffusion probabilistic models are hindered by local inductive biases stemming from convolutional operations, constraining their ability to model long-term dependencies and leading to inaccurate mask generation. Conversely, Transformer offers a remedy by obviating the local inductive biases inherent in convolutional operations, thereby enhancing segmentation precision. Currently, the integration of Transformer and convolution operations mainly occurs in two forms: nesting and stacking.

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Article Synopsis
  • Convolutional Neural Networks (CNNs) are commonly used for medical image segmentation, but they struggle with long-term dependencies due to local inductive biases.
  • The introduction of Transformer technology helps overcome these limitations by allowing for better modeling of long-range relationships, leading to improved segmentation and classification accuracies.
  • The paper presents a parallel hybrid model that combines Transformer and CNN branches to extract both local and global features effectively, achieving high segmentation performance with an average Dice coefficient of 92.65% on the Flare21 dataset and 91.61% on the Amos22 dataset.
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The flat-joint model, which constructs round particles as polygons, can suppress rotation after breakage between particles and simulate more larger compression and tension ratios than the linear parallel-bond model. The flat-joint contact model was chosen for this study to calibrate the rock for 3D experiments. In the unit experiments, the triaxial unit was loaded with flexible boundaries, and the influence of each microscopic parameter on the significance magnitude of the macroscopic parameters (modulus of elasticity , Poisson's ratio , uniaxial compressive strength , crack initiation strength , internal friction angle and uniaxial tensile strength ) was analysed by ANOVA (Analysis of Variance) in an orthogonal experimental design.

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