ReconNet: Non-Iterative Reconstruction of Images from Compressively Sensed Measurements

K. Kulkarni, Suhas Lohit, P. Turaga, Ronan Kerviche, A. Ashok
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引用次数: 515

Abstract

The goal of this paper is to present a non-iterative and more importantly an extremely fast algorithm to reconstruct images from compressively sensed (CS) random measurements. To this end, we propose a novel convolutional neural network (CNN) architecture which takes in CS measurements of an image as input and outputs an intermediate reconstruction. We call this network, ReconNet. The intermediate reconstruction is fed into an off-the-shelf denoiser to obtain the final reconstructed image. On a standard dataset of images we show significant improvements in reconstruction results (both in terms of PSNR and time complexity) over state-of-the-art iterative CS reconstruction algorithms at various measurement rates. Further, through qualitative experiments on real data collected using our block single pixel camera (SPC), we show that our network is highly robust to sensor noise and can recover visually better quality images than competitive algorithms at extremely low sensing rates of 0.1 and 0.04. To demonstrate that our algorithm can recover semantically informative images even at a low measurement rate of 0.01, we present a very robust proof of concept real-time visual tracking application.
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ReconNet:压缩感测图像的非迭代重建
本文的目标是提出一种非迭代的,更重要的是一种极快的算法来从压缩感知(CS)随机测量中重建图像。为此,我们提出了一种新的卷积神经网络(CNN)架构,该架构将图像的CS测量作为输入并输出中间重建。我们称这个网络为ReconNet。中间重建被送入现成的去噪器,以获得最终的重建图像。在一个标准的图像数据集上,我们展示了在不同测量速率下,与最先进的迭代CS重建算法相比,重建结果(在PSNR和时间复杂度方面)的显著改进。此外,通过使用我们的块单像素相机(SPC)收集的真实数据的定性实验,我们表明我们的网络对传感器噪声具有很高的鲁棒性,并且可以在0.1和0.04的极低感知率下恢复比竞争算法更好的视觉质量图像。为了证明我们的算法即使在0.01的低测量率下也能恢复语义信息丰富的图像,我们提出了一个非常强大的概念验证实时视觉跟踪应用程序。
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