Forest Sparsity for Multi-channel Compressive Sensing
Chen Chen, Yeqing Li, Junzhou Huang

TL;DR
This paper introduces forest sparsity, a new model for multi-channel compressive sensing that leverages hierarchical tree structures and inter-channel correlations, significantly reducing measurement requirements.
Contribution
It proposes the forest sparsity model, extending compressive sensing theory to multi-channel data with hierarchical and inter-channel correlations, and develops a new algorithm validated by experiments.
Findings
Measurement requirement is reduced to O(Tk + log(N/k))
Forest sparsity outperforms tree, joint, and standard sparsity models in efficiency
Algorithm demonstrates effectiveness across multiple applications
Abstract
In this paper, we investigate a new compressive sensing model for multi-channel sparse data where each channel can be represented as a hierarchical tree and different channels are highly correlated. Therefore, the full data could follow the forest structure and we call this property as \emph{forest sparsity}. It exploits both intra- and inter- channel correlations and enriches the family of existing model-based compressive sensing theories. The proposed theory indicates that only measurements are required for multi-channel data with forest sparsity, where is the number of channels, and are the length and sparsity number of each channel respectively. This result is much better than of tree sparsity, of joint sparsity, and far better than of standard sparsity. In…
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