Despite excellent progress has been made, the performance of deep learning based algorithms still heavily rely on specific datasets, which are difficult to extend due to labor-intensive labeling. Moreover, because of the advancement of new applications, initial definition of data annotations might not always meet the requirements of new functionalities. Thus, there is always a great demand in customized data annotations. To address the above issues, we propose the Few-Shot Model Adaptation (FSMA) framework and demonstrate its potential on several important tasks on Faces. The FSMA first acquires robust facial image embeddings by training an adversarial auto-encoder using large-scale unlabeled data. Then the model is equipped with feature adaptation and fusion layers, and adapts to the target task efficiently using a minimal amount of annotated images. The FSMA framework is prominent in its versatility across a wide range of facial image applications. The FSMA achieves state-of-the-art few-shot landmark detection performance and it offers satisfying solutions for few-shot face segmentation, stylization and facial shadow removal tasks for the first time.
翻译:尽管取得了极佳的进展,深层次学习的算法仍然在很大程度上依赖于具体的数据集,由于劳动密集型标签,难以扩展。此外,由于新应用程序的进步,对数据说明的初步定义可能并不总是符合新功能的要求。因此,对定制数据说明的需求总是很大。为了解决上述问题,我们建议采用鲜热模型适应框架,并展示其在面部若干重要任务上的潜力。FSMA首先通过培训一个使用大型无标签数据的对抗性自动编码器来获得坚固的面部图像嵌入。然后,该模型配备了特征适应和聚合层,并有效地利用少量附加说明图像来适应目标任务。FSMA框架在广泛的面部图像应用中具有显著的多功能。FSMA取得了最先进的、最先进的、最短的标志性标志性探测功能,首次为很少的面部分割、显形和面部阴影清除任务提供了令人满意的解决方案。