Despite the success of deep learning on supervised point cloud semantic segmentation, obtaining large-scale point-by-point manual annotations is still a significant challenge. To reduce the huge annotation burden, we propose a Region-based and Diversity-aware Active Learning (ReDAL), a general framework for many deep learning approaches, aiming to automatically select only informative and diverse sub-scene regions for label acquisition. Observing that only a small portion of annotated regions are sufficient for 3D scene understanding with deep learning, we use softmax entropy, color discontinuity, and structural complexity to measure the information of sub-scene regions. A diversity-aware selection algorithm is also developed to avoid redundant annotations resulting from selecting informative but similar regions in a querying batch. Extensive experiments show that our method highly outperforms previous active learning strategies, and we achieve the performance of 90% fully supervised learning, while less than 15% and 5% annotations are required on S3DIS and SemanticKITTI datasets, respectively.
翻译:尽管在受监督的云层语义分割方面进行了深层次的学习,但获得大规模点对点的人工说明仍然是一个重大挑战。为了减轻巨大的批注负担,我们提议建立一个基于区域和多样性的主动学习(REDAL),这是许多深层次学习方法的总框架,目的是自动选择仅具有信息性和多样性的次层区域来获取标签。我们注意到,只有一小部分附加说明的区域足以通过深层次学习来了解三维场景,我们使用软式麦克斯酶、色彩不连续和结构复杂性来衡量亚封闭区的信息。多样性认知选择算法也是为了避免在一组查询中选择信息性但相似的区域而产生多余的说明。广泛的实验表明,我们的方法大大优于以往的积极学习战略,我们实现了90%的全面监督学习,而S3DIS和SmanticKITTI数据集则分别需要不到15%和5%的说明。