The alignment of shapes has been a crucial step in statistical shape analysis, for example, in calculating mean shape, detecting locational differences between two shape populations, and classification. Procrustes alignment is the most commonly used method and state of the art. In this work, we uncover that alignment might seriously affect the statistical analysis. For example, alignment can induce false shape differences and lead to misleading results and interpretations. We propose a novel hierarchical shape parameterization based on local coordinate systems. The local parameterized shapes are translation and rotation invariant. Thus, the inherent alignment problems from the commonly used global coordinate system for shape representation can be avoided using this parameterization. The new parameterization is also superior for shape deformation and simulation. The method's power is demonstrated on the hypothesis testing of simulated data as well as the left hippocampi of patients with Parkinson's disease and controls.
翻译:形状的对齐是统计形状分析中的一个关键步骤,例如,在计算平均形状、发现两种形状群之间的位置差异和分类方面。Procrustes的对齐是最常用的方法和工艺状态。在这项工作中,我们发现这种对齐会严重影响统计分析。例如,对齐会诱发假形状差异并导致误导结果和解释。我们提议根据地方协调系统进行新的等级形状参数化。当地参数化的形状是翻译和旋转。因此,使用这种参数可以避免常用的形状代表全球协调系统固有的对齐问题。新的参数化对于形状变形和模拟来说也更优越。该方法的力量在模拟数据的假设测试以及Parkinson疾病和控制病人的左侧河马运动中表现出来。