In recent years, single image dehazing models (SIDM) based on atmospheric scattering model (ASM) have achieved remarkable results. However, it is noted that ASM-based SIDM degrades its performance in dehazing real world hazy images due to the limited modelling ability of ASM where the atmospheric light factor (ALF) and the angular scattering coefficient (ASC) are assumed as constants for one image. Obviously, the hazy images taken in real world cannot always satisfy this assumption. Such generating modelling mismatch between the real-world images and ASM sets up the upper bound of trained ASM-based SIDM for dehazing. Bearing this in mind, in this study, a new fully non-homogeneous atmospheric scattering model (FNH-ASM) is proposed for well modeling the hazy images under complex conditions where ALF and ASC are pixel dependent. However, FNH-ASM brings difficulty in practical application. In FNH-ASM based SIDM, the estimation bias of parameters at different positions lead to different distortion of dehazing result. Hence, in order to reduce the influence of parameter estimation bias on dehazing results, two new cost sensitive loss functions, beta-Loss and D-Loss, are innovatively developed for limiting the parameter bias of sensitive positions that have a greater impact on the dehazing result. In the end, based on FNH-ASM, an end-to-end CNN-based dehazing network, FNHD-Net, is developed, which applies beta-Loss and D-Loss. Experimental results demonstrate the effectiveness and superiority of our proposed FNHD-Net for dehazing on both synthetic and real-world images. And the performance improvement of our method increases more obviously in dense and heterogeneous haze scenes.
翻译:近年来,基于大气散射模型(ASM)的单一图像脱色模型(SIDM)取得了显著成果,然而,人们注意到,基于ASM的ASM SID由于ASM建模能力有限,致使其在失色真实世界的模糊图像中的表现降低,原因是ASM的模拟能力有限,因为大气光系数(ALF)和角散射系数(ASC)被认为是一个图像的常数。然而,在现实世界中拍摄的模糊图像并不总是能够满足这一假设。在基于SISDM的FNH-ASM图像和ASM之间产生建模不匹配,从而建立了经过训练的ASMDSD的SDD图像的顶部。考虑到这一点,在本研究中,提出了一个新的完全不具有混合性、大气散射效果的AFNH-A模型(FSM-AS)在复杂的条件下建模。 然而,FNHS-ASM在实际应用方面遇到困难。 在基于SDM的F-ASM中,不同位置的参数估计偏差导致不同的解析结果。因此,为了降低成本结果,LO-LO-deal-deal-dealal-dealalalalalal-de reslal reslateal reslal resisl resislal beal beal laisl laut resmaisal laut lautal lax lax lax laut la lax lax lax lax lax lax lax laut lautal lax lautal laut lax lax lax lax lax lax lax lax lax lax lax laut lax lax lax lax lax laut lax lax lax lax lax lax lax lautal lautal lax lax lax lax lax laut lax lax lax la la la lax lax lax lax lax lax la lax lax lax lax la