Semantic Segmentation Models

UCTransNet is an end-to-end deep learning network for semantic segmentation that takes U-Net as the main structure of the network. The original skip connections of U-Net are replaced by CTrans consisting of two components: Channel-wise Cross fusion Transformer (CCT) and Channel-wise Cross Attention (CCA) to guide the fused multi-Scale channel-wise information to effectively connect to the decoder features for eliminating the ambiguity.

Source: UCTransNet: Rethinking the Skip Connections in U-Net from a Channel-wise Perspective with Transformer

Papers


Paper Code Results Date Stars

Tasks


Task Papers Share
Image Segmentation 4 25.00%
Medical Image Segmentation 4 25.00%
Semantic Segmentation 4 25.00%
Pseudo Label 1 6.25%
text annotation 1 6.25%
Decoder 1 6.25%
UNET Segmentation 1 6.25%

Categories