Feb. 5, 2024, 6:46 a.m. | Bum Jun Kim Sang Woo Kim

cs.CV updates on arXiv.org arxiv.org

Deep neural networks have exhibited remarkable performance in a variety of computer vision fields, especially in semantic segmentation tasks. Their success is often attributed to multi-level feature fusion, which enables them to understand both global and local information from an image. However, we found that multi-level features from parallel branches are on different scales. The scale disequilibrium is a universal and unwanted flaw that leads to detrimental gradient descent, thereby degrading performance in semantic segmentation. We discover that scale disequilibrium …

computer computer vision cs.cv equalization feature features fields found fusion global image information networks neural networks performance scale segmentation semantic success tasks them vision

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