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Faster. Higher. Stronger. SHO-FA: Robust compressive sensing with order-optimal complexity, measurements, and bits. SHO-FA:. compressive sensing. with. Robust. measurements, and bits. order-optimal complexity,. Mayank Bakshi , Sidharth Jaggi , Sheng Cai and Minghua C hen
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Faster Higher Stronger SHO-FA: Robust compressive sensing with order-optimal complexity, measurements, and bits SHO-FA: compressive sensing with Robust measurements, and bits order-optimal complexity, MayankBakshi, SidharthJaggi, ShengCaiand MinghuaChen The Chinese University of Hong Kong
Compressive sensing ? m ? n k k ≤ m<n
Robust compressive sensing ? e z Random y=A(x+z)+e Approximate sparsity Measurement noise
# of measurements Lower bound °CM’06 °GSTV’06 °TG’07 °SBB’06 °C’08 °IR’08 Lower bound °RS’60 This work °DJM’11 °MV’12,KP’12 Decoding complexity
SHO(rt)-FA(st) Good Bad Good Bad
High-Level Overview 3 3 4 4 4 4 ck ck n n k=2 k=2
High-Level Overview How to guarantee the existence of leaf node How to find the leaf nodes and utilize the leaf nodes to do decoding 3 3 4 4 4 ck n k=2
Q1: How to guarantee the existence of leaf node? Left-regular Bipartite Graph d=3 A ck n
Q1: How to guarantee the existence of leaf node? Existence of leaf nodes e.g., existence of 2-core in d-uniform hypergraph Sharp transition M. T. Goodrich and M. Mitzenmacher, “Invertible bloom lookup tables,” ArXiv.org e-Print archive, arXiv:1101.2245 [cs.DS], 2011.
Q1: How to guarantee the existence of leaf node? Existence of “Many” leafs L+L’≥2|S| ≥2|S| |S| 3|S|≥L+2L’ (L+L’)/(L+2L’) ≥2/3 L/(L+L’) ≥1/2
Q2: How to find the leaf nodes and utilize the leaf nodes to do decoding? Bipartite Graph → Sensing Matrix d=3 Distinct weights A ck n
Q2: How to find the leaf nodes and utilize the leaf nodes to do decoding? Bipartite Graph → Sensing Matrix A ck n
Q2: How to find the leaf nodes and utilize the leaf nodes to do decoding? Encoding
Q2: How to find the leaf nodes and utilize the leaf nodes to do decoding? Decoding
Decoding – Second Iteration Verification Measurements
SHO-FA v.s. Pick-Up-Sticks Peeling process: Iterative Decoding Observation: Identification Check: Verification Picking up a “top” stick: Leaf-based decoding
Robust Compressive Sensing Phase error Propagation error …… …… Pawar, Sameer and Ramchandran, Kannan, “A Hybrid DFT-LDPC Framework for Fast and Robust Compressive Sensing”
Truncated Reconstruction Threshold
Correlated Measurements Phase quantization
Correlated Measurements (First bit) Phase quantization
Additional Properties • Other works • Group Testing • Network Tomography • Reduce the number of measurements • Combine Identification and verification • More noise models • Sparse in different bases • Database query • ……
2-core in d-uniform hypergraph • The 2-core is the largest sub-hypergraph that has minimum degree at least 2. • The standard “peeling process” finds the 2-core: while there exists a vertex with degree 1, delete it and the corresponding hyperedges. Node degree 1 hyperedge
(Almost) S(x)-expansion ck n ≥2|S| |S|