论文标题
对象感知的自我监管的多标签学习
Object-Aware Self-supervised Multi-Label Learning
论文作者
论文摘要
关于图像数据的多标签学习已通过深度学习模型广泛利用。但是,对深CNN模型的监督培训通常无法发现足够的判别特征进行分类。结果,提出了许多自学方法来学习更多可靠的图像表示。但是,大多数自我监督的方法都集中在单个标签数据上,并且缺乏具有多个对象的更复杂的图像。因此,我们提出了一种对象感知的自学方法(OASS)方法,以获取多标签学习的更细粒度表示,并根据对象位置动态生成辅助任务。其次,可以利用OAS学到的强大表示形式,以无需提案的方式有效地生成特定于类的实例(CSI),以更好地指导多标签监督信号传递到实例。在VOC2012数据集上进行多标签分类的广泛实验证明了该方法针对最先进的对应物的有效性。
Multi-label Learning on Image data has been widely exploited with deep learning models. However, supervised training on deep CNN models often cannot discover sufficient discriminative features for classification. As a result, numerous self-supervision methods are proposed to learn more robust image representations. However, most self-supervised approaches focus on single-instance single-label data and fall short on more complex images with multiple objects. Therefore, we propose an Object-Aware Self-Supervision (OASS) method to obtain more fine-grained representations for multi-label learning, dynamically generating auxiliary tasks based on object locations. Secondly, the robust representation learned by OASS can be leveraged to efficiently generate Class-Specific Instances (CSI) in a proposal-free fashion to better guide multi-label supervision signal transfer to instances. Extensive experiments on the VOC2012 dataset for multi-label classification demonstrate the effectiveness of the proposed method against the state-of-the-art counterparts.