A structured matrix factorization framework for large scale calcium imaging data analysis

We present a structured matrix factorization approach to analyzing calciumimaging recordings of large neuronal ensembles. Our goal is to simultaneouslyidentify the locations of the neurons, demix spatially overlapping components,and denoise and deconvolve

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