Abstract

One category of the superresolution algorithms widely used in practical applications is dictionary-based superresolution algorithms, which constructs a single high-resolution (HR) and high-clarity image from multiple low-resolution (LR) images. Despite the fact that general dictionary-based superresolution algorithms obtain redundant dictionaries from numerous HR-LR images, HR image distortion is unavoidable. To solve this problem, this paper proposes a multiframe superresolution reconstruction based on self-learning methods. First, multiple images from the same scene are selected to be both input and training images, and larger-scale images, which are also involved in the training set, are constructed from the learning dictionary. Then, different larger-scale images are constructed via repetition of the first step and the initial HR sets whose scale closely approximates that of the target HR image are finally obtained. Lastly, initial HR images are fused into one target HR image under the NLM idea, while the IBP idea is adopted to meet the global constraint. The simulation results demonstrate that the proposed algorithm produces more accurate reconstructions than those produced by other general superresolution algorithms, while, in real scene experiments, the proposed algorithm can run well and create clearer HR images from input images captured by cameras.

Highlights

  • In modern engineering, high-resolution (HR) images are always desirable which provides important information for making important decisions in various practical applications, for example, biometrics, airborne detection system, medical diagnosis, high definition television (HDTV), and remote surveillance

  • In superresolution reconstruction, distortion of reconstructed images occurs when frequency information of target images is not contained in training images

  • This paper proposes a multiple superresolution reconstruction algorithm based on self-learning dictionary

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Summary

Introduction

High-resolution (HR) images are always desirable which provides important information for making important decisions in various practical applications, for example, biometrics, airborne detection system, medical diagnosis, high definition television (HDTV), and remote surveillance. A promising alternative is the superresolution technique, which reconstructs one HR image from one or more low-resolution (LR) images shot from the same scene, providing sufficient relevant information. CEVA Company firstly combined superresolution techniques with CEVAMM3101 low-power imaging and vision platform successfully, which used LR sensors to construct HR image, and have been applied to camera-enabled mobile devices. French company SPOT applied superresolution techniques to SPOT-5 satellite which can obtain clearer ground scene images and identify targets more accurately, compared with SPOT-4 which did not adopt superresolution techniques. Superresolution technique has been a hot spot to improve images’ resolution without changing the optical system of the camera

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