Acoustic imaging is a powerful technique to localize and reconstruct source powers using microphone array, but it often involves timeconsuming and ill-posed inverse problems. In this paper, we propose to efficient build up the forward model of acoustic power propagation by using the convolution with the spatially invariant kernel. And kernel size and values are appropriately derived from the Symmetric Toepliz Block Toepliz of propagation matrix. For inverse problem, we then propose to apply hierarchical Variational Bayesian inference in order to achieve robust acoustic imaging in the colored background noises; Student's-t prior is explored to enforce the sparse distribution of acoustic powers and to obtain super resolution; moreover, wide dynamic range of estimated powers can be obtained thanks to the heavy tail of Student'st distribution; To achieve robust estimations, colored noise distributions are also modeled by the Student's-t prior, which does not excessively penalize large errors as the Gaussian prior does. Finally the proposed approach is compared with classical methods on the real data from wind tunnel experiments.