We present a deep-learning-based approach to restore turbulencedistorted images from turbulent deformations and space-time varying blurs. Instead of requiring a massive training sample size in deep networks, we propose a simple but effective data augmentation method to firstly make deep learning approach feasible to solve turbulence problem with data scarcity. Then we employ the proposed Turbulence Removal Network (TRN), which is the Wasserstein generative adversarial network (GAN) with a 1 cost and multiframe input to freshly restore the degraded image under atmospheric turbulence. Finally, we novelly explore the possibility to introduce a subsampling algorithm in the deep network to filter out strongly corrupted frames and enhance the restoration performance. We also investigate the viability to significantly reduce the demand of a huge number of turbulence-distorted frames in our deep network TRN without losing the quality of the reconstructed image. Experimental results demonstrate the effectiveness of the subsampling algorithm by significantly enhancing the image quality without requiring a large number of frames in deep learning.
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