统一单幅图像去噪和去噪的交叉拼接多任务双递归网络

Sotiris Karavarsamis, Alexandros Doumanoglou, Konstantinos Konstantoudakis, D. Zarpalas
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引用次数: 0

摘要

针对多任务学习环境下的统一学习和下雪任务,提出了交叉拼接多任务统一双递归网络(CMUDRN)模型。该统一模型借鉴了Cai等人开发的基本双递归网络(Dual Recursive Network, DRN)架构。所提出的模型利用十字绣单元,实现跨两个单独的DRN模型的多任务学习,每个模型分别负责单个图像的脱除和除雪。通过将十字绣单元固定在基本任务特定DRN网络的几层,我们在两个独立的DRN模型上执行多任务学习。为了实现盲图像恢复,在这些结构之上,我们采用了一个简单的神经融合方案,该方案合并了每个DRN的输出。单独的特定任务DRN模型和融合方案通过实施局部和全局监督同时进行训练。该模型的两个DRN子模块采用局部监督,数据融合子模块采用全局监督。因此,我们既可以实现跨任务特定DRN模型的特征共享,又可以控制DRN子模块的图像恢复行为。一项消融研究表明了假设的CMUDRN模型的强度,实验表明其在单幅图像脱除和下雪任务上的性能与基线DRN模型相当或更好。此外,CMUDRN通过朴素的参数融合方案统一特定于任务的图像恢复管道,从而实现两个底层图像恢复任务的盲图像恢复。CMUDRN实现可从https://github.comNCL3D/CMUDRN获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cross-Stitched Multi-task Dual Recursive Networks for Unified Single Image Deraining and Desnowing
We present the Cross-stitched Multi-task Unified Dual Recursive Network (CMUDRN) model targeting the task of unified deraining and desnowing in a multi-task learning setting. This unified model borrows from the basic Dual Recursive Network (DRN) architecture developed by Cai et al. The proposed model makes use of cross-stitch units that enable multi-task learning across two separate DRN models, each tasked for single image deraining and desnowing, respectively. By fixing cross-stitch units at several layers of basic task-specific DRN networks, we perform multi - task learning over the two separate DRN models. To enable blind image restoration, on top of these structures we employ a simple neural fusion scheme which merges the output of each DRN. The separate task-specific DRN models and the fusion scheme are simultaneously trained by enforcing local and global supervision. Local supervision is applied on the two DRN submodules, and global supervision is applied on the data fusion submodule of the proposed model. Consequently, we both enable feature sharing across task-specific DRN models and control the image restoration behavior of the DRN submodules. An ablation study shows the strength of the hypothesized CMUDRN model, and experiments indicate that its performance is comparable or better than baseline DRN models on the single image deraining and desnowing tasks. Moreover, CMUDRN enables blind image restoration for the two underlying image restoration tasks, by unifying task-specific image restoration pipelines via a naive parametric fusion scheme. The CMUDRN implementation is available at https://github.comNCL3D/CMUDRN.
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