集成蒸馏中的知识概率化:提高目标检测器的精度和不确定度量化

Yang Yang;Chao Wang;Lei Gong;Min Wu;Zhenghua Chen;Xiang Li;Xianglan Chen;Xuehai Zhou
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引用次数: 0

摘要

集成目标检测器在提高预测精度和不确定度量化方面显示出显著的效果。然而,它们的广泛采用受到大量计算和存储需求的阻碍,限制了它们在资源受限环境下的可行性。为了克服这个问题,研究人员专注于将集合物体探测器的知识提炼成一个单一的模型。在本文中,我们介绍了基于概率的集成蒸馏(ProbED),这是一种创新的集成蒸馏框架,它将来自多个对象检测器的知识整合到一个单一的资源高效模型中。与传统的集成蒸馏方法不同,该方法平均了副教师的输出,probe捕获了所有副教师的综合结果分布,为知识转移提供了更细致的方法。ProbED通过知识概率化实现了对教师知识(包括特征知识、语义知识和定位知识)的精细聚合,从而在学生模型的预测精度和不确定性量化方面实现了双重提升。特别是,ProED基于知识概率的新方法聚合教师知识的灵感来自于我们的经验观察,这些观察表明,知识概率在有效地表示不确定性、改进预测和促进稳健的知识转移方面表现出色。此外,我们引入了随机平滑摄动技术来修改探针内的输入,进一步提高了蒸馏过程。大量的实验表明,probe能够显著提高各种目标探测器的预测精度和不确定性量化,与其他最先进的技术相比,显示出其优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Knowledge Probabilization in Ensemble Distillation: Improving Accuracy and Uncertainty Quantification for Object Detectors
Ensemble object detectors have demonstrated remarkable effectiveness in enhancing prediction accuracy and uncertainty quantification. However, their widespread adoption is hindered by significant computational and storage demands, limiting their feasibility in resource-constrained settings. To overcome this, researchers have focused on distilling the knowledge from ensemble object detectors into a single model. In this article, we introduce probabilization based ensemble distillation (ProbED), an innovative ensemble distillation framework that consolidates knowledge from multiple object detectors into a single, resource-efficient model. Unlike traditional ensemble distillation methods that average the outputs of subteachers, ProbED captures comprehensive outcome distributions from all subteachers, providing a more nuanced approach to knowledge transfer. ProbED employs knowledge probabilization to achieve a sophisticated and refined aggregation of teacher knowledge, including feature knowledge, semantic knowledge, and localization knowledge, resulting in dual improvements in prediction accuracy and uncertainty quantification for the student model. In particular, ProED's novel knowledge probabilization-based approach to aggregating teacher knowledge is inspired by our empirical observations, which demonstrate that knowledge probabilization excels in effectively representing uncertainty, improving prediction, and facilitating robust knowledge transfer. Furthermore, we introduce a random smoothing perturbation technique to modify inputs within ProbED, further enhancing the distillation process. Extensive experiments highlight ProbED's ability to significantly enhance the prediction accuracy and uncertainty quantification of various object detectors, demonstrating its superior performance compared to other state-of-the-art techniques.
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