论文标题
通过稳健3D点云分类的开放式识别来赋予知识蒸馏
Empowering Knowledge Distillation via Open Set Recognition for Robust 3D Point Cloud Classification
论文作者
论文摘要
尽管在研究方面取得了巨大的成功,但现实世界情景对基于深度学习的计算机视觉技术构成了一些挑战。更深层次的模型提供了更好的性能,但要挑战部署和知识蒸馏,使我们能够训练较小的型号,而绩效损失最少。该模型还必须从培训的课程中处理开放式样本,并且应该能够将其识别为未知样本,同时正确对已知样本进行分类。最后,大多数现有的图像识别研究仅着重于使用现实世界三维对象的二维快照。在这项工作中,我们旨在桥接这三个研究领域,尽管这三个研究领域一直是独立开发的,但尽管存在深厚的相互关联。我们建议对三维对象识别的共同知识蒸馏和开放式识别培训方法。我们通过各种实验证明了该方法的有效性,以了解它如何使我们获得一个较小的模型,该模型的性能最小,同时可以对3D点云数据进行开放式识别。
Real-world scenarios pose several challenges to deep learning based computer vision techniques despite their tremendous success in research. Deeper models provide better performance, but are challenging to deploy and knowledge distillation allows us to train smaller models with minimal loss in performance. The model also has to deal with open set samples from classes outside the ones it was trained on and should be able to identify them as unknown samples while classifying the known ones correctly. Finally, most existing image recognition research focuses only on using two-dimensional snapshots of the real world three-dimensional objects. In this work, we aim to bridge these three research fields, which have been developed independently until now, despite being deeply interrelated. We propose a joint Knowledge Distillation and Open Set recognition training methodology for three-dimensional object recognition. We demonstrate the effectiveness of the proposed method via various experiments on how it allows us to obtain a much smaller model, which takes a minimal hit in performance while being capable of open set recognition for 3D point cloud data.