论文标题
学会在未标记的图像中检测重要的人,以进行半监督的重要人物检测
Learning to Detect Important People in Unlabelled Images for Semi-supervised Important People Detection
论文作者
论文摘要
重要的人发现是自动检测在社交活动图像中扮演最重要角色的个人,这需要设计模型才能了解高级模式。但是,现有方法在很大程度上依赖于使用大量带注释的图像样本的监督学习,而这些图像样本比对个人实体识别(例如,对象识别)收集更为昂贵。为了克服这个问题,我们建议学习重要的人在部分注释的图像上检测到。我们的迭代方法学会了将伪标记分配给未经注销图像的个人,并学会根据具有标签和伪标签的数据来更新重要的人检测模型。为了减轻伪标记的不平衡问题,我们引入了伪标签估计的排名策略,还引入了两种加权策略:一个用于加权个人对个人对重要人物的重要人物的信心,以加强对重要人物的学习,而另一个人则忽略了忽略嘈杂的嘈杂图像(即,没有任何重要的人)。我们收集了两个大规模数据集以进行评估。广泛的实验结果清楚地证实了通过利用未标记的图像来改善重要人物的性能,我们获得的方法的功效。
Important people detection is to automatically detect the individuals who play the most important roles in a social event image, which requires the designed model to understand a high-level pattern. However, existing methods rely heavily on supervised learning using large quantities of annotated image samples, which are more costly to collect for important people detection than for individual entity recognition (eg, object recognition). To overcome this problem, we propose learning important people detection on partially annotated images. Our approach iteratively learns to assign pseudo-labels to individuals in un-annotated images and learns to update the important people detection model based on data with both labels and pseudo-labels. To alleviate the pseudo-labelling imbalance problem, we introduce a ranking strategy for pseudo-label estimation, and also introduce two weighting strategies: one for weighting the confidence that individuals are important people to strengthen the learning on important people and the other for neglecting noisy unlabelled images (ie, images without any important people). We have collected two large-scale datasets for evaluation. The extensive experimental results clearly confirm the efficacy of our method attained by leveraging unlabelled images for improving the performance of important people detection.