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</script>handle: 10446/174754
Abstract Dynamic Textures (DTs) are image sequences of moving scenes that present stationary properties in time. In this paper, we apply Dynamic Mode Decomposition (DMD) and Dynamic Mode Decomposition with Control (DMDc) to identify a parametric model of dynamic textures. The identification results are compared with a benchmark method from the dynamic texture literature, both from a mathematical and from a computational complexity point of view. Extensive simulations are carried out to assess the performance of the proposed algorithms with regards to synthesis and denoising purposes, with different types of dynamic textures. Results show that DMD and DMDc present lower error, lower residual noise and lower variance compared to the benchmark approach.
Control and Systems Engineering, Dynamic textures; System Identification; Texture Synthesis; Dynamic Mode Decomposition
Control and Systems Engineering, Dynamic textures; System Identification; Texture Synthesis; Dynamic Mode Decomposition
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