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Separating positional noise from neutral alignment in multicomponent statistical shape models

机译:分离多组分统计形状模型中的位置噪声

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Given sufficient training samples, statistical shape models can provide detailed population representations for use in anthropological and computational genetic studies, injury biomechanics, musculoskeletal disease models or implant design optimization. While the technique has become extremely popular for the description of isolated anatomical structures, it suffers from positional interference when applied to coupled or articulated input data. In the present manuscript we describe and validate a novel approach to extract positional noise from such coupled data. The technique was first validated and then implemented in a multicomponent model of the lower limb. The impact of noise on the model itself as well as on the description of sexual dimorphism was evaluated. The novelty of our methodology lies in the fact that no rigid transformations are calculated or imposed on the data by means of idealized joint definitions and by extension the models obtained from them.
机译:鉴于足够的训练样本,统计形状模型可以提供用于人类学和计算遗传研究的详细人口表征,损伤生物力学,肌肉骨骼疾病模型或植入物设计优化。虽然该技术变得极为流行的隔离解剖结构,但当施加到耦合或铰接输入数据时,它受到位置干扰。在本手稿中,我们描述并验证了一种提取来自这种耦合数据的位置噪声的新方法。首先验证该技术,然后在下肢的多组分模型中实现。评估了噪声对模型本身的影响以及性别二态性描述。我们的方法的新颖性在于通过通过理想的联合定义来计算或施加对数据的刚性变换,并通过扩展从它们获得的模型来计算或施加数据。

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