论文标题
在感知质量评估中平滑平滑的成对学习
Rank-smoothed Pairwise Learning In Perceptual Quality Assessment
论文作者
论文摘要
进行成对比较是一种策划人类感知偏好数据的广泛使用的方法。通常,评估者会根据一组特定的规则来解决自己的选择,以解决图像质量和美学的某些维度。此过程的结果是一个及其相关的经验偏好概率的采样图像对的数据集。对这些成对偏好进行培训模型是一种常见的深度学习方法。但是,通过小批量学习通过梯度下降进行优化意味着图像的“全局”排名没有明确考虑。换句话说,梯度下降的每个步骤仅依赖于有限数量的成对比较。在这项工作中,我们证明,将成对的经验概率正规化具有汇总秩概率的概率会导致更可靠的训练损失。我们表明,通过我们的排名平滑损失训练深层的图像质量评估模型始终提高预测人类偏好的准确性。
Conducting pairwise comparisons is a widely used approach in curating human perceptual preference data. Typically raters are instructed to make their choices according to a specific set of rules that address certain dimensions of image quality and aesthetics. The outcome of this process is a dataset of sampled image pairs with their associated empirical preference probabilities. Training a model on these pairwise preferences is a common deep learning approach. However, optimizing by gradient descent through mini-batch learning means that the "global" ranking of the images is not explicitly taken into account. In other words, each step of the gradient descent relies only on a limited number of pairwise comparisons. In this work, we demonstrate that regularizing the pairwise empirical probabilities with aggregated rankwise probabilities leads to a more reliable training loss. We show that training a deep image quality assessment model with our rank-smoothed loss consistently improves the accuracy of predicting human preferences.