Analysis of the Influence of Training Data on Road User Detection

Carlos Guindel, David Martín, J. M. Armingol, C. Stiller
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Abstract

In this paper, we discuss the relevance of training data on modern object detectors used on onboard applications. Whereas modern deep learning techniques require large amounts of data, datasets with typical scenarios for autonomous vehicles are scarce and have a reduced number of samples. We conduct a comprehensive set of experiments to understand the effect of using a combination of two relatively small datasets to train an end-to-end object detector, based on the popular Faster R-CNN and enhanced with orientation estimation capabilities. We also test the adequacy of training models using partially available ground-truth labels, as a consequence of combining datasets aimed at different applications. Data augmentation is also introduced into the training pipeline. Results show a significant performance improvement in our exemplary case as a result of the higher variability of the training samples, thus opening a new way to improve the detection performance independently from the detector architecture.
训练数据对道路使用者检测的影响分析
在本文中,我们讨论了用于机载应用的现代目标检测器的训练数据的相关性。尽管现代深度学习技术需要大量数据,但具有自动驾驶汽车典型场景的数据集很少,并且样本数量减少。我们进行了一组全面的实验,以了解使用两个相对较小的数据集的组合来训练端到端目标检测器的效果,该检测器基于流行的Faster R-CNN并增强了方向估计功能。我们还使用部分可用的真值标签来测试训练模型的充分性,这是针对不同应用组合数据集的结果。数据增强也被引入到训练管道中。结果表明,在我们的示例案例中,由于训练样本的高可变性,性能得到了显著提高,从而开辟了一种独立于检测器架构提高检测性能的新途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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