We study the problem of recovering a short signal and a sparse signal from their convolution. We propose a method based on nonconvex optimization, which under certain conditions recovers the target short and sparse signals, up to a signed shift symmetry which is intrinsic to this model. This symmetry plays a central role in shaping the optimization landscape for deconvolution. We give a , which characterizes this landscape geometrically, on a union of subspaces. Our geometric characterization holds when the length- short signal has shift coherence , and follows a random sparsity model with sparsity rate . Based on this geometry, we give a provable method that successfully solves SaS deconvolution with high probability.
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