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Automatic segmentation of the femur and tibia bones from X-ray images based on pure dilated residual U-Net

Weihao Shen, Wenbo Xu, Hongyang Zhang, Zexin Sun, Jianxiong Ma, Xinlong Ma, Shoujun Zhou, Shijie Guo, Yuanquan Wang

2020Inverse Problems and Imaging57 citationsDOI

Abstract

X-ray images of the lower limb bone are the most commonly used imaging modality for clinical studies, and segmentation of the femur and tibia in an X-ray image is helpful for many medical studies such as diagnosis, surgery and treatment. In this paper, we propose a new approach based on pure dilated residual U-Net for the segmentation of the femur and tibia bones. The proposed approach employs dilated convolution completely to increase the receptive field, in this way, we can make full use of the advantages of dilated convolution. We conducted experiments and evaluations on datasets provided by Tianjin hospital. Comparison with the classical U-net and FusionNet, our method has fewer parameters, higher accuracy, and converges more rapidly, which means the high performance of the proposed method.

Topics & Concepts

ResidualSegmentationTibiaFemurConvolution (computer science)Computer scienceArtificial intelligenceNoise (video)Image segmentationComputer visionMedicineAlgorithmAnatomyImage (mathematics)SurgeryArtificial neural networkMedical Imaging and AnalysisDental Radiography and ImagingAI in cancer detection
Automatic segmentation of the femur and tibia bones from X-ray images based on pure dilated residual U-Net | Litcius