The advent of deep learning in the past decade has significantly helped advance image inpainting. Although achieving promising performance, deep learning-based inpainting algorithms still struggle from the distortion caused by the fusion of structural and contextual features, which are commonly obtained from, respectively, deep and shallow layers of a convolutional encoder. Motivated by this observation, we propose a novel progressive inpainting network that maintains the structural and contextual integrity of a processed image. More specifically, inspired by the Gaussian and Laplacian pyramids, the core of the proposed network is a feature extraction module named GLE. Stacking GLE modules enables the network to extract image features from different image frequency components. This ability is important to maintain structural and contextual integrity, for high frequency components correspond to structural information while low frequency components correspond to contextual information. The proposed network utilizes the GLE features to progressively fill in missing regions in a corrupted image in an iterative manner. Our benchmarking experiments demonstrate that the proposed method achieves clear improvement in performance over many state-of-the-art inpainting algorithms.
翻译:近十年来深层学习的到来极大地帮助了图像的绘制。虽然取得了有希望的成绩,但深层的基于学习的油漆算法仍在挣扎,因为结构特征和背景特征的融合造成了扭曲,而结构和背景特征的融合通常分别来自一个革命编码器的深层和浅层。受这一观察的驱动,我们提议建立一个新的渐进的油漆网络,以维持一个经过处理的图像的结构和背景完整性。更具体地说,在高山和拉普拉西亚金字塔的启发下,拟议网络的核心是一个称为GLE的特征提取模块。Stacking GLE模块使网络能够从不同的图像频率组件中提取图像特征。这一能力对于保持结构性和背景完整性十分重要,因为高频组件与结构信息相对应,而低频组件与背景信息相对应。拟议的网络利用GLE特征,以迭接方式逐渐以腐败图像填补缺失区域的空白。我们的基准实验表明,拟议的方法在很多状态的绘图算法上取得了明显的改进。