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Automated vision system for skeletal age assessment using knowledge based techniques

机译:基于知识技术的骨骼年龄评估自动视觉系统

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This paper presents a knowledge-based automated vision system to segment bones in a child's hand radiograph image, and to determine growth progress using decision theoretic approaches. A hierarchical knowledge-based localisation scheme is used to localise bones in the hand radiograph image. Bone contour detection is then implemented with further knowledge represented by active shape models (ASM). Hence a set of parameters is generated to describe the bone contour shape. The bone image is parameterised to describe its texture which is correlated to growth age. Regression and Bayesian methods are then used to model the characteristics of the most correlated shape parameters to the growth age as well as texture parameters in a training set. The models are finally applied to test images to estimate their bone ages. The Bayesian methods result in an 8.93% average relative error.
机译:本文介绍了一种基于知识的自动视觉系统,可在儿童手中射线图像中分段骨骼,并使用决策理论方法确定增长进展。基于分层知识的本地化方案用于本地化手中的骨骼Xco.1。然后利用主动形状模型(ASM)表示的进一步知识来实现​​骨轮廓检测。因此,生成一组参数以描述骨轮廓形状。骨图像被参数化以描述其与生长年龄相关的纹理。然后用于将回归和贝叶斯方法用于将最相关的形状参数的特征模拟到生长年龄以及训练集中的纹理参数。最终型号旨在测试图像以估计其骨骼年龄。贝叶斯方法导致平均相对误差为8.93%。

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