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首页> 外文期刊>ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences >HYBRID ACQUISITION OF HIGH QUALITY TRAINING DATA FOR SEMANTIC SEGMENTATION OF 3D POINT CLOUDS USING CROWD-BASED ACTIVE LEARNING
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HYBRID ACQUISITION OF HIGH QUALITY TRAINING DATA FOR SEMANTIC SEGMENTATION OF 3D POINT CLOUDS USING CROWD-BASED ACTIVE LEARNING

机译:用基于人群的积极学习的3D点云的语义细分的高质量训练数据的混合习得

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Automated semantic interpretation of 3D point clouds is crucial for many tasks in the domain of geospatial data analysis. For this purpose, labeled training data is required, which has often to be provided manually by experts. One approach to minimize effort in terms of costs of human interaction is Active Learning (AL). The aim is to process only the subset of an unlabeled dataset that is particularly helpful with respect to class separation. Here a machine identifies informative instances which are then labeled by humans, thereby increasing the performance of the machine. In order to completely avoid involvement of an expert, this time-consuming annotation can be resolved via crowdsourcing. Therefore, we propose an approach combining AL with paid crowdsourcing. Although incorporating human interaction, our method can run fully automatically, so that only an unlabeled dataset and a fixed financial budget for the payment of the crowdworkers need to be provided. We conduct multiple iteration steps of the AL process on the ISPRS Vaihingen 3D Semantic Labeling benchmark dataset (V3D) and especially evaluate the performance of the crowd when labeling 3D points. We prove our concept by using labels derived from our crowd-based AL method for classifying the test dataset. The analysis outlines that by labeling only 0:4% of the training dataset by the crowd and spending less than 145 $, both our trained Random Forest and sparse 3D CNN classifier differ in Overall Accuracy by less than 3 percentage points compared to the same classifiers trained on the complete V3D training set.
机译:3D点云的自动语义解释对于地理空间数据分析领域的许多任务至关重要。为此目的,需要标记的培训数据,这些数据通常由专家手动提供。在人类互动成本方面最大限度地减少努力的一种方法是活动学习(AL)。目的是仅处理对类分离特别有用的未标记数据集的子集。这里,机器识别由人类标记的信息性的情况,从而提高了机器的性能。为了完全避免专家的参与,可以通过众包解决这种耗时的注释。因此,我们提出了一种与付费众包结合的方法。虽然纳入人类互动,但我们的方法可以完全自动运行,因此只需要提供一个未标记的数据集和用于支付人群者的固定财务预算。我们在ISPRS Vaihingen 3D语义标签基准数据集(V3D)上进行AL进程的多个迭代步骤,特别是在标记3D点时评估人群的性能。我们通过使用从基于人群的AL方法派生的标签来证明我们的概念,用于对测试数据集进行分类。分析轮廓概述了人群标签的0:4%的培训数据集,并花费不到145美元,我们训练有素的随机森林和稀疏3D CNN分类器的总体精度与相同的分类器相比小于3个百分点。培训完整的V3D培训集。

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