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Long-Bone Fracture Detection using Artificial Neural Networks based on Line Features of X-ray Images

机译:基于X射线图像线特征的人工神经网络长骨骨折检测

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Two line-based fracture detection schemes are developed and discussed, namely Standard line-based fracture detection and Adaptive Differential Parameter Optimized (ADPO) line-based fracture detection. The purpose of the two line-based fracture detection schemes is to detect fractured lines from X-ray images using extracted features based on recognised patterns to differentiate fractured lines from non-fractured lines. The schemes reduce the number of images required for training, as the training is performed line-wise. The difference between the two schemes is the detection of lines. The ADPO scheme optimizes the parameters of the Probabilistic Hough Transform, such that granule lines within the fractured regions are detected. The lines are given in the form of points, (x, y), which includes the starting and ending points. Based on the given line points, 13 features are extracted from each line as a summary of line information. These features are used for fracture and non-fracture classification of the detected lines. The classification is carried out by the Artificial Neural Network (ANN). The Standard Scheme is capable of achieving an average accuracy of 71.57%, whereas the ADPO scheme achieved an average accuracy of 72.89%. The ADPO scheme is opted for over the Standard scheme, however it can be further improved with contour fracture detection.
机译:提出并讨论了两种基于线的裂缝检测方案,即基于标准线的裂缝检测和基于自适应差分参数优化(ADPO)线的裂缝检测方案。两种基于线的裂缝检测方案的目的是使用基于已识别图案的提取特征从X射线图像检测裂缝线,以将裂缝线与非裂缝线区分开。该方案减少了训练所需的图像数量,因为训练是逐行进行的。两种方案之间的区别在于对线路的检测。 ADPO方案优化了概率霍夫变换的参数,从而可以检测出裂缝区域内的颗粒线。线以点(x,y)的形式给出,其中包括起点和终点。根据给定的线点,从每条线中提取13个特征作为线信息的摘要。这些特征用于检测到的管线的断裂和非断裂分类。分类是通过人工神经网络(ANN)进行的。标准方案的平均准确度为71.57%,而ADPO方案的平均准确度为72.89%。选择了ADPO方案而不是Standard方案,但是可以通过轮廓断裂检测进一步改进。

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