We present a Riemannian framework for linear and quadratic discriminant classification on the tangent plane of the shape space of curves. The shape space is infinite dimensional and is constructed out of square root velocity functions of curves. We introduce the idea of mean and covariance of shape-valued random variables and samples from a tangent space to the pre-shape space (invariant to translation and scaling) and then extend it to the full shape space (rotational invariance). The shape observations from the population are approximated by coefficients of a Fourier basis of the tangent space. The algorithms for linear and quadratic discriminant analysis are then defined using reduced dimensional features obtained by projecting the original shape observations on to the truncated Fourier basis. We show classification results on synthetic data and shapes of cortical sulci, corpus callosum curves, as well as facial midline curve profiles from patients with fetal alcohol syndrome (FAS).
翻译:本文提出了一种在曲线形状空间的切平面上进行线性与二次判别分类的黎曼框架。该形状空间为无限维,由曲线的平方根速度函数构建而成。我们引入了形状值随机变量及样本在切空间(对平移与缩放不变)中的均值与协方差概念,并将其扩展至完整形状空间(旋转不变)。通过切空间傅里叶基的系数对总体中的形状观测进行近似表示。随后,利用将原始形状观测投影至截断傅里叶基所获得的降维特征,定义了线性与二次判别分析算法。我们在合成数据、大脑皮层沟回形状、胼胝体曲线以及胎儿酒精综合征(FAS)患者面部中线曲线轮廓数据上展示了分类结果。