In recent years, the Thermal Image Super-Resolution (TISR) problem has become an attractive research topic. TISR would been used in a wide range of fields, including military, medical, agricultural and animal ecology. Due to the success of PBVS-2020 and PBVS-2021 workshop challenge, the result of TISR keeps improving and attracts more researchers to sign up for PBVS-2022 challenge. In this paper, we will introduce the technical details of our submission to PBVS-2022 challenge designing a Bilateral Network with Channel Splitting Network and Transformer(BN-CSNT) to tackle the TISR problem. Firstly, we designed a context branch based on channel splitting network with transformer to obtain sufficient context information. Secondly, we designed a spatial branch with shallow transformer to extract low level features which can preserve the spatial information. Finally, for the context branch in order to fuse the features from channel splitting network and transformer, we proposed an attention refinement module, and then features from context branch and spatial branch are fused by proposed feature fusion module. The proposed method can achieve PSNR=33.64, SSIM=0.9263 for x4 and PSNR=21.08, SSIM=0.7803 for x2 in the PBVS-2022 challenge test dataset.
翻译:近年来,热成像超分辨率(TISR)问题已成为一个有吸引力的研究课题。TISR将被用于广泛的领域,包括军事、医疗、农业和动物生态。由于PBVS-2020和PBVS-2021讲习班的挑战,TISR不断改进并吸引更多的研究人员报名参加PBVS-2022的挑战。在本文件中,我们将介绍我们提交PBVS-2022的挑战的技术细节,设计一个与频道分解网络和变换器(BN-CONT)的双边网络,以解决TISR问题。首先,我们设计了一个以配有变压器的频道分解网络为基础的背景分支,以获得足够的背景信息。第二,我们设计了一个带有浅变压器的空间分支,以提取能够保护空间信息的低水平特征。最后,为了整合频道分解网络和变压器的特征,我们建议了一个关注改进模块,然后将上下文分支和空间分支的特征通过拟议的特征融合模块整合。拟议的方法可以在数据x33.64、SSIM=NS=NS.920.8中实现PS=DRSS.92xx0.23标准。