Multi-Label Semantic 3D Reconstruction Using Voxel Blocks

Ian Cherabier, Christian Häne, Martin R. Oswald, M. Pollefeys
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引用次数: 45

Abstract

Techniques that jointly perform dense 3D reconstruction and semantic segmentation have recently shown very promising results. One major restriction so far is that they can often only handle a very low number of semantic labels. This is mostly due to their high memory consumption caused by the necessity to store indicator variables for every label and transition. We propose a way to reduce the memory consumption of existing methods. Our approach is based on the observation that many semantic labels are only present at very localized positions in the scene, such as cars. Therefore this label does not need to be active at every location. We exploit this observation by dividing the scene into blocks in which generally only a subset of labels is active. By determining early on in the reconstruction process which labels need to be active in which block the memory consumption can be significantly reduced. In order to recover from mistakes we propose to update the set of active labels during the iterative optimization procedure based on the current solution. We also propose a way to initialize the set of active labels using a boosted classifier. In our experimental evaluation we show the reduction of memory usage quantitatively. Eventually, we show results of joint semantic 3D reconstruction and semantic segmentation with significantly more labels than previous approaches were able to handle.
使用体素块的多标签语义三维重建
联合执行密集三维重建和语义分割的技术最近显示出非常有希望的结果。到目前为止,一个主要的限制是它们通常只能处理非常少的语义标签。这主要是由于它们需要为每个标签和转换存储指示符变量而导致的高内存消耗。我们提出了一种减少现有方法的内存消耗的方法。我们的方法是基于这样的观察:许多语义标签只出现在场景中非常局部的位置,比如汽车。因此,这个标签不需要在每个位置都是激活的。我们通过将场景划分为块来利用这一观察结果,通常只有一部分标签是活跃的。通过在重建过程的早期确定哪些标签需要在哪个块中激活,可以显着减少内存消耗。为了从错误中恢复,我们提出在迭代优化过程中基于当前解更新活动标签集。我们还提出了一种使用增强分类器初始化活动标签集的方法。在我们的实验评估中,我们定量地展示了内存使用的减少。最后,我们展示了联合语义三维重建和语义分割的结果,与以前的方法相比,它们能够处理更多的标签。
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