Abstract:
Most methods for medical image segmentation use U-Net or its variants as they have been successful in most of the applications. After a detailed analysis of these “tradit...Show MoreMetadata
Abstract:
Most methods for medical image segmentation use U-Net or its variants as they have been successful in most of the applications. After a detailed analysis of these “traditional” encoder-decoder based approaches, we observed that they perform poorly in detecting smaller structures and are unable to segment boundary regions precisely. This issue can be attributed to the increase in receptive field size as we go deeper into the encoder. The extra focus on learning high level features causes U-Net based approaches to learn less information about low-level features which are crucial for detecting small structures. To overcome this issue, we propose using an overcomplete convolutional architecture where we project the input image into a higher dimension such that we constrain the receptive field from increasing in the deep layers of the network. We design a new architecture for im- age segmentation- KiU-Net which has two branches: (1) an overcomplete convolutional network Kite-Net which learns to capture fine details and accurate edges of the input, and (2) U-Net which learns high level features. Furthermore, we also propose KiU-Net 3D which is a 3D convolutional architecture for volumetric segmentation. We perform a detailed study of KiU-Net by performing experiments on five different datasets covering various image modalities. We achieve a good performance with an additional benefit of fewer parameters and faster convergence. We also demonstrate that the extensions of KiU-Net based on residual blocks and dense blocks result in further performance improvements. Code: https://github.com/jeya-maria-jose/KiU-Net-pytorch
Published in: IEEE Transactions on Medical Imaging ( Volume: 41, Issue: 4, April 2022)
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- IEEE Keywords
- Index Terms
- Image Segmentation ,
- Convolutional Architecture ,
- Architecture For Segmentation ,
- Volumetric Segmentation ,
- Convolutional Network ,
- Input Image ,
- Deeper Layers ,
- Receptive Field ,
- High-level Features ,
- Low-level Features ,
- Residual Block ,
- 3D Architecture ,
- 3D Convolution ,
- Receptive Field Size ,
- Medical Image Segmentation ,
- Dense Block ,
- Age Segments ,
- Feature Maps ,
- Magnetic Resonance Imaging Scans ,
- 3D Scanning ,
- Brain Tumor Segmentation ,
- Max-pooling Layer ,
- Encoder Layer ,
- 3D U-Net ,
- Upsampling Layer ,
- Conv Layer ,
- Skip Connections ,
- Tumor Surface ,
- Number Of Filters ,
- Decoder Layer
- Author Keywords
- MeSH Terms
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Image Segmentation ,
- Convolutional Architecture ,
- Architecture For Segmentation ,
- Volumetric Segmentation ,
- Convolutional Network ,
- Input Image ,
- Deeper Layers ,
- Receptive Field ,
- High-level Features ,
- Low-level Features ,
- Residual Block ,
- 3D Architecture ,
- 3D Convolution ,
- Receptive Field Size ,
- Medical Image Segmentation ,
- Dense Block ,
- Age Segments ,
- Feature Maps ,
- Magnetic Resonance Imaging Scans ,
- 3D Scanning ,
- Brain Tumor Segmentation ,
- Max-pooling Layer ,
- Encoder Layer ,
- 3D U-Net ,
- Upsampling Layer ,
- Conv Layer ,
- Skip Connections ,
- Tumor Surface ,
- Number Of Filters ,
- Decoder Layer
- Author Keywords
- MeSH Terms