Intrinsic image decomposition is the process of recovering the image formation components (reflectance and shading) from an image. Previous methods employ either explicit priors to constrain the problem or implicit constraints as formulated by their losses (deep learning). These methods can be negatively influenced by strong illumination conditions causing shading-reflectance leakages. Therefore, in this paper, an end-to-end edge-driven hybrid CNN approach is proposed for intrinsic image decomposition. Edges correspond to illumination invariant gradients. To handle hard negative illumination transitions, a hierarchical approach is taken including global and local refinement layers. We make use of attention layers to further strengthen the learning process. An extensive ablation study and large scale experiments are conducted showing that it is beneficial for edge-driven hybrid IID networks to make use of illumination invariant descriptors and that separating global and local cues helps in improving the performance of the network. Finally, it is shown that the proposed method obtains state of the art performance and is able to generalise well to real world images. The project page with pretrained models, finetuned models and network code can be found at https://ivi.fnwi.uva.nl/cv/pienet/.
翻译:原始图像分解过程是从图像中恢复图像形成组成部分(反射和阴影)的过程。以前的方法采用明确的前置方法来限制问题,或采用其损失(深学习)产生的隐含限制。这些方法可能受到强烈的照明条件的不利影响,导致阴影反射渗漏。因此,在本文件中,建议采用端到端边缘驱动的混合CNN方法来进行内在图像分解。电磁与易变梯度相匹配。为了处理硬性负光化转变,我们采取了等级化方法,包括全球和地方的改进层。我们利用关注层来进一步加强学习过程。进行广泛的通融研究和大规模实验表明,边缘驱动混合 IID网络使用挥发性描述器是有益的,将全球和地方的提示分开有助于改善网络的性能。最后,显示拟议的方法获得了艺术性能的状态,能够对真实世界图像进行概括化。带有预变动型/变动型模型的项目网页可以进行微调/变型模型。