Extending computational harmonic analysis tools from the classical setting of regular lattices to the more general setting of graphs and networks is very important and much research has been done recently. The Generalized Haar-Walsh Transform (GHWT) developed by Irion and Saito (2014) is a multiscale transform for signals on graphs, which is a generalization of the classical Haar and Walsh-Hadamard Transforms. We propose the extended Generalized Haar-Walsh Transform (eGHWT), which is a generalization of the adapted time-frequency tilings of Thiele and Villemoes (1996). The eGHWT examines not only the efficiency of graph-domain partitions but also that of "sequency-domain" partitions simultaneously. Consequently, the eGHWT and its associated best-basis selection algorithm for graph signals significantly improve the performance of the previous GHWT with the similar computational cost, $O(N \log N)$, where $N$ is the number of nodes of an input graph. While the GHWT best-basis algorithm seeks the most suitable orthonormal basis for a given task among more than $(1.5)^N$ possible orthonormal bases in $\mathbb{R}^N$, the eGHWT best-basis algorithm can find a better one by searching through more than $0.618\cdot(1.84)^N$ possible orthonormal bases in $\mathbb{R}^N$. This article describes the details of the eGHWT best-basis algorithm and demonstrates its superiority using several examples including genuine graph signals as well as conventional digital images viewed as graph signals. Furthermore, we also show how the eGHWT can be extended to 2D signals and matrix-form data by viewing them as a tensor product of graphs generated from their columns and rows and demonstrate its effectiveness on applications such as image approximation.
翻译:将计算协调分析工具从常规拉特的经典设置扩展至更一般的图表和网络设置非常重要, 最近也进行了大量研究。 由Irion 和 Saito (2014) 开发的普通 Haar- Walsh 变换( GHWT ) 是图中信号的多级变换, 这是古典Haar 和 Walsh- Hadamard 变换( eGHWT) 的概括化, 这是对Thiele 和 Villememoes (1996 ) 调整的时频变换( 缩略微调) 和 Villememoes (1996 ) 的变换时间变换的图像。 eGHWS- Wal- Walsh 变换的变换( GHAR- Walsh 变换) 不仅审查图形- 数字- walsh 的变现效率, 而且还同时审查“ 序列- 数- 数字- halb ” 的变现, 以一个最合适的或更合适的货币变现的货币变现的变现数据, 。