基于分类难度的自动驾驶汽车传感器数据质量保证

Kana Kim, Sangjun Lee, Hakil Kim
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引用次数: 0

摘要

利用深度学习的自动驾驶技术已经取得了大量的研究成果和优异的性能,但训练模型的过程需要大量的高质量数据,人类仍然难以直接检查处理后的数据并证明其质量。此外,为深度学习算法的上下文和功能分离对数据的训练难度进行分类也是一个重要的挑战。本文提出了一个验证新数据集质量的框架,该框架还对数据集的训练难度进行了分类,从而保证了有效数据集的通用性,并引入了对上下文数据集进行分类的策略。在人工智能中心数据集上的实验证明了它的质量,并且能够按照难度级别重新组织成数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quality Assurance of Autonomous Vehicle’s Sensor Data based on Classifying Level of Difficulty
Self-driving technology using deep learning has achieved a lot of research and excellent performance, but the process of training a model requires a large amount of high-quality data and it is still difficult for humans to directly inspect the processed data and prove its quality. In addition, classifying the training difficulty of the data for contextual and functional separation of deep learning algorithm is also an important challenge. This paper proposes a framework for validating the quality of constructed new datasets, which also classifies the training difficulty of datasets, thereby ensuring the versatility of valid datasets and introducing strategies to classify contextual datasets. Experiments on the AI hub dataset proved its quality and were able to be reorganized into datasets classified by difficulty level.
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