2020
DOI: 10.3390/app10051679
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Weakly Supervised Conditional Random Fields Model for Semantic Segmentation with Image Patches

Abstract: Image semantic segmentation (ISS) is used to segment an image into regions with differently labeled semantic category. Most of the existing ISS methods are based on fully supervised learning, which requires pixel-level labeling for training the model. As a result, it is often very time-consuming and labor-intensive, yet still subject to manual errors and subjective inconsistency. To tackle such difficulties, a weakly supervised ISS approach is proposed, in which the challenging problem of label inference from … Show more

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References 46 publications
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