This document summarizes research on sparse channel estimation techniques for MIMO-OFDM systems using compressed sensing theory. It describes how compressed sensing algorithms like Subspace Pursuit (SP) and CoSaMP can provide better channel estimation performance than conventional techniques like least squares estimation. SP and CoSaMP are greedy algorithms that iteratively select columns from the measurement matrix to minimize mean square error. Simulation results showed these compressed sensing algorithms reduce mean square error and bit error rate compared to normal channel estimation.