Journal of Japan Society for Fuzzy Theory and Intelligent Informatics
Online ISSN : 1881-7203
Print ISSN : 1347-7986
ISSN-L : 1347-7986
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Efficient Upper Limb Bone Region Extraction Using Bidirectional Convolution
Yu IMAMOTOKeiko ONODaisuke TAWARAYusuke MATSUURANaohiro MASUDA
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2025 Volume 37 Issue 1 Pages 591-595

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Abstract

Semantic segmentation of bone structures is a technique for partitioning the entire image into bone-specific regions, which requires pixel-by-pixel classification and high extraction accuracy of objects in the image to build an accurate bone model that can be used for diagnosis. Many segmentation methods have been developed, but the most common ones are based on Convolutional Neural Networks (CNNs). However, it has been reported that CNN-based segmentation methods cannot extract objects with complex shapes, such as a wrist, with high accuracy. One reason for this is the failure to consider the three-dimensional structure of medical images. Moreover, 3D-CNN methods have been proposed to tackle this problem, but 3D-CNNs require a huge amount of learning data. Considering bone segmentation, we should improve 2D-CNN models to apply to practical uses easily. Therefore, we propose a 2D-CNN-based segmentation method that uses bidirectional convolution processing and reconstructed images to take into account the three-dimensional structure of the bones in the upper limb region. Specifically, our method analyzes images from two directions, axial and sagittal, with two different models combining BiConvLSTM and Attention U-Net. The images reconstructed from the sagittal plane to the axial plane are then used to obtain the attention map of the segmentation target. Validation experiments show that the proposed method exhibits an IoU of 0.9355, which is higher than the state-of-the-art Mask2Former method.

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© 2025 Japan Society for Fuzzy Theory and Intelligent Informatics
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