构建了一个统一的多图学习框架,来验证在不同类别情感图像中,使用不同级别特征在情感图像检索上的性能表现。首先,提取每个图像在不同层级上的共有特征,其中,从元素级别提取的一般特征作为底层特征;可解释的属性特征作为中层特征;而情感图像的语义感念描述作为高层特征。其次,为每种类型的特征构建一个图模型来验证情感图像检索的性能。最后,将多个图模型合并在一个规范化的框架内来学习每个图模型的优化权重。通过在5个不同数据集上得到的实验结果验证了所提方法的有效性。
In this paper,we concentrate on affective image retrieval and investigate the performance of different features on different kinds of images in a multi-graph learning framework.Firstly,we extract commonly used features of different levels for each image.Generic features and features derived from elements-of-art are extracted as low-level features.Attributes and interpretable principles-of-art based features are viewed as mid-level features,while semantic concepts described by adjective noun pairs and facial expressions are extracted as high-level features.Secondly,we construct single graph for each kind of features to test the retrieval performance.Finally,we combine the multiple graphs together into a regularization framework to learn the optimized weights of each graph to efficiently explore the complementation of different features.Extensive experiments are conducted on five datasets and the results demonstrate the effectiveness of the proposed method.