Multipath CNN with alpha matte inference for knee tissue segmentation from MRI
Sheheryar Khan, Basim Azam, Yongcheng Yao, Weitian Chen

TL;DR
This paper introduces a novel multipath CNN framework with low rank tensor reconstruction and alpha matting for improved knee tissue segmentation in MRI, addressing challenges like low contrast and structural inhomogeneity.
Contribution
It proposes a new multipath CNN architecture combined with low rank tensor reconstruction and trimap-based alpha matting for more accurate knee tissue segmentation from MRI.
Findings
Enhanced segmentation accuracy demonstrated on OAI datasets.
Effective boundary delineation through trimap-guided alpha matting.
Improved cartilage thickness mapping for diagnosis.
Abstract
Precise segmentation of knee tissues from magnetic resonance imaging (MRI) is critical in quantitative imaging and diagnosis. Convolutional neural networks (CNNs), which are state of the art, have limitations owing to the lack of image-specific adaptation, such as low tissue contrasts and structural inhomogeneities, thereby leading to incomplete segmentation results. This paper presents a deep learning based automatic segmentation framework for knee tissue segmentation. A novel multipath CNN-based method is proposed, which consists of an encoder decoder-based segmentation network in combination with a low rank tensor-reconstructed segmentation network. Low rank reconstruction in MRI tensor sub-blocks is introduced to exploit the structural and morphological variations in knee tissues. To further improve the segmentation from CNNs, trimap generation, which effectively utilizes…
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Taxonomy
TopicsOsteoarthritis Treatment and Mechanisms · Diabetic Foot Ulcer Assessment and Management · Advanced Neural Network Applications
