We present SrvfNet, a generative deep learning framework for the joint multiple alignment of large collections of functional data comprising square-root velocity functions (SRVF) to their templates. Our proposed framework is fully unsupervised and is capable of aligning to a predefined template as well as jointly predicting an optimal template from data while simultaneously achieving alignment. Our network is constructed as a generative encoder-decoder architecture comprising fully-connected layers capable of producing a distribution space of the warping functions. We demonstrate the strength of our framework by validating it on synthetic data as well as diffusion profiles from magnetic resonance imaging (MRI) data.
翻译:我们提出了SrvfNet,这是一个基因深层次学习框架,用于将包含平底速度函数的大型功能数据收集系统与其模板进行多重组合。我们提议的框架完全不受监督,能够与预先定义的模板保持一致,并能够共同从数据中预测最佳模板,同时实现对齐。我们的网络是一个基因编码器-解码器结构,由能够产生扭曲功能分布空间的完全相连的层组成。我们通过对合成数据以及磁共振成像(MRI)数据的传播剖析来验证我们的框架的力度。