论文标题
伪标签和元重新权学习图像美学质量评估
Pseudo-labelling and Meta Reweighting Learning for Image Aesthetic Quality Assessment
论文作者
论文摘要
在图像美学质量评估的任务中,由于美学数据集的正常分布,很难达到高分区和低分区域。为了减少标签的错误并解决了正常数据分布的问题,我们提出了一个新的审美混合数据集,该数据集具有分类和回归称为AMD-CR的问题,我们训练一个元重量重量重量的网络,以不同的培训数据丢失。此外,我们根据二进制分类任务的伪标签,为不同阶段提供培训策略,然后我们将其用于美学培训,以对分类和回归任务的不同阶段进行审美培训。在网络结构的构建中,我们构建了一个可以适应输入图像的任何大小的美学自适应块(AAB)结构。此外,我们还使用有效的通道注意力(ECA)来增强每个任务的特征提取能力。实验结果表明,与SROCC中的常规方法相比,我们的方法提高了0.1112。该方法还可以帮助找到无人机(UAV)和车辆的最佳美学路径计划。
In the tasks of image aesthetic quality evaluation, it is difficult to reach both the high score area and low score area due to the normal distribution of aesthetic datasets. To reduce the error in labeling and solve the problem of normal data distribution, we propose a new aesthetic mixed dataset with classification and regression called AMD-CR, and we train a meta reweighting network to reweight the loss of training data differently. In addition, we provide a training strategy acccording to different stages, based on pseudo labels of the binary classification task, and then we use it for aesthetic training acccording to different stages in classification and regression tasks. In the construction of the network structure, we construct an aesthetic adaptive block (AAB) structure that can adapt to any size of the input images. Besides, we also use the efficient channel attention (ECA) to strengthen the feature extracting ability of each task. The experimental result shows that our method improves 0.1112 compared with the conventional methods in SROCC. The method can also help to find best aesthetic path planning for unmanned aerial vehicles (UAV) and vehicles.