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Detection of Bone Fractures Automatically with Enhanced Performance with Better Combination of Filtering and Neural Networks

机译:通过过滤和神经网络的更好结合来自动检测具有增强性能的骨骨折

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Major parts affecting the accidents are bone and severe bone fractures lead to the death of human beings. Timely treatment is to be provided to the injuries, and sometimes orthopedic surgeons need to take immediate decisions regarding surgeries to the injuries. Among the available X-Ray, MRI, and CT scan options for bone fracture detection, X-Rays are mostly used due to its availability with less cost to all kinds of people. Here an automatic X-ray fractures detection technique is proposed which helps orthopaedecians to take an immediate decision for surgeries and to detect the fracture even without the support of an orthopaedician. In this paper, a back propagation neural network (BPNN) along with canny edge segmentation and a conservative smoothing filtering technique is proposed which helps in getting a better accuracy rate when compared to SVM (Support Vector Machine) and ANN (Artificial Neural Network). The proposed methodology also compares with the Harris corner detection technique. Among all other techniques a combination of BPNN with Canny edge detection and conservative smoothing proves to better performer for automatic bone fracture detection with accuracy of 91%.
机译:影响事故的主要部分是骨头,严重的骨折导致人的死亡。应及时为受伤者提供治疗,有时矫形外科医生需要就受伤者的外科手术立即做出决定。在用于骨折检测的可用X射线,MRI和CT扫描选项中,由于使用X射线对各种人群的花费较少,因此大多使用X射线。这里提出了一种自动的X射线骨折检测技术,即使没有骨科医生的支持,该技术也可以帮助骨科医师立即做出手术决定并检测骨折。本文提出了一种反向传播神经网络(BPNN)以及Canny边缘分割和保守的平滑滤波技术,与SVM(支持向量机)和ANN(人工神经网络)相比,有助于获得更高的准确率。所提出的方法还与哈里斯角点检测技术进行了比较。在所有其他技术中,结合使用BPNN和Canny边缘检测和保守平滑技术,以91%的准确度证明是用于自动骨折检测的更好性能。

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