In recent years, deep natural image matting has been rapidly evolved by extracting high-level contextual features into the model. However, most current methods still have difficulties with handling tiny details, like hairs or furs. In this paper, we argue that recovering these microscopic details relies on low-level but high-definition texture features. However, {these features are downsampled in a very early stage in current encoder-decoder-based models, resulting in the loss of microscopic details}. To address this issue, we design a deep image matting model {to enhance fine-grained details. Our model consists of} two parallel paths: a conventional encoder-decoder Semantic Path and an independent downsampling-free Textural Compensate Path (TCP). The TCP is proposed to extract fine-grained details such as lines and edges in the original image size, which greatly enhances the fineness of prediction. Meanwhile, to leverage the benefits of high-level context, we propose a feature fusion unit(FFU) to fuse multi-scale features from the semantic path and inject them into the TCP. In addition, we have observed that poorly annotated trimaps severely affect the performance of the model. Thus we further propose a novel term in loss function and a trimap generation method to improve our model's robustness to the trimaps. The experiments show that our method outperforms previous start-of-the-art methods on the Composition-1k dataset.
翻译:近年来,通过将高层次背景特征引入模型,深天然图像交配迅速演变。然而,大多数当前方法在处理细小细节(如毛发或毛皮)方面仍有困难。在本文件中,我们争辩说,恢复这些微小细节取决于低层次但高清晰的纹理特征。然而,{这些特征在目前基于编码器-脱coder模型的模型的最初阶段就被淡化了,从而导致微缩细节的丧失}。为了解决这一问题,我们设计了一个深层次图像交配模型{以强化细细细细细节。我们的模型包括了}两个平行路径:传统的编码器-脱coder Smantic 路径和独立的下标自下标自由的质谱质谱调路径。提议这些特征在原始图像大小的线和边缘等精细细的细细的细细的模型,这极大地提高了预测的精细细细节。同时,为了利用高层次背景的效益,我们建议将一个特征组合单位(FFU) 来强化精细的细细细细的细细细细细的细的细细细细的细细细细细的模型交配。我们建议将一个精细的拼凑的细的细的细的细的细的细细细的细的细细细的细细的细的细的细的细的细的细的细的细的细的细的细细细细细的细细细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细细细细细的细的细的细的细的细细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细细细细细细的细的细的细的细的细的细的细细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的细的