An unbiased scene graph generation (SGG) algorithm referred to as Skew Class-balanced Re-weighting (SCR) is proposed for considering the unbiased predicate prediction caused by the long-tailed distribution. The prior works focus mainly on alleviating the deteriorating performances of the minority predicate predictions, showing drastic dropping recall scores, i.e., losing the majority predicate performances. It has not yet correctly analyzed the trade-off between majority and minority predicate performances in the limited SGG datasets. In this paper, to alleviate the issue, the Skew Class-balanced Re-weighting (SCR) loss function is considered for the unbiased SGG models. Leveraged by the skewness of biased predicate predictions, the SCR estimates the target predicate weight coefficient and then re-weights more to the biased predicates for better trading-off between the majority predicates and the minority ones. Extensive experiments conducted on the standard Visual Genome dataset and Open Image V4 \& V6 show the performances and generality of the SCR with the traditional SGG models.
翻译:先前的工程主要侧重于缓解少数上游预测的恶化性能,显示回溯得分急剧下降,即失去多数的上游性能,尚未正确分析有限SGG数据集中多数和少数的上游性能之间的权衡。为缓解这一问题,本文为不偏倚的SGG模型考虑了SCR Skew 类平衡重估损失函数。由于偏向性上游预测的偏差,SCR估计了目标上游加权系数,然后对偏向性假设进行更多的再加权,以更好地交易多数上游和少数上游性能。在标准视觉基因组数据集和开放图像V4++V6上进行的广泛实验展示了SCR与传统SGG模型的性能和一般性能。</s>