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Multi-region saliency-aware learning for cross-domain placenta image segmentation. | LitMetric

AI Article Synopsis

  • - We introduce a new method called multi-region saliency-aware learning (MSL) for better segmenting placenta images across different domains, which improves upon traditional transfer learning methods that struggle with maintaining semantic meaning.
  • - The MSL method utilizes an attention mechanism to pinpoint important regions in images and includes a saliency constraint to ensure key features stay consistent during the translation process between domains.
  • - Our experiments with two real-world placenta datasets demonstrate that MSL not only enhances image segmentation but also helps accurately predict placental diagnoses related to maternal and fetal inflammatory responses, outperforming existing techniques.

Article Abstract

We propose a multi-region saliency-aware learning (MSL) method for cross-domain placenta image segmentation. Unlike most existing image-level transfer learning methods that fail to preserve the semantics of paired regions, our MSL incorporates the attention mechanism and a saliency constraint into the adversarial translation process, which can realize multi-region mappings in the semantic level. Specifically, the built-in attention module serves to detect the most discriminative semantic regions that the generator should focus on. Then we use the attention consistency as another guidance for retaining semantics after translation. Furthermore, we exploit the specially designed saliency-consistent constraint to enforce the semantic consistency by requiring the saliency regions unchanged. We conduct experiments using two real-world placenta datasets we have collected. We examine the efficacy of this approach in (1) segmentation and (2) prediction of the placental diagnoses of fetal and maternal inflammatory response (FIR, MIR). Experimental results show the superiority of the proposed approach over the state of the art.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7727399PMC
http://dx.doi.org/10.1016/j.patrec.2020.10.004DOI Listing

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