This work introduces the Topological CNN (TCNN), which encompasses several topologically defined convolutional methods. Manifolds with important relationships to the natural image space are used to parameterize image filters which are used as convolutional weights in a TCNN. These manifolds also parameterize slices in layers of a TCNN across which the weights are localized. We show evidence that TCNNs learn faster, on less data, with fewer learned parameters, and with greater generalizability and interpretability than conventional CNNs. We introduce and explore TCNN layers for both image and video data. We propose extensions to 3D images and 3D video.
翻译:这项工作引入了地形学CNN(TNN),它包含几种由地形学定义的变迁方法,与自然图像空间有重要关系的元件被用来参数化图象过滤器,这些图象过滤器在TCNN中用作变相权重。这些元件还参数化了TCNN层的切片,其重量分布于该层之间。我们展示了证据,证明TCNN在较少的数据上学习得更快,学习的参数较少,而且比常规CNN的参数更普及和可解释。我们为图像和视频数据介绍和探索TCNN层。我们提议扩展3D图像和3D视频。