Dionysus: Recovering Scene Structures by Dividing into Semantic Pieces

Likang Wang, Lei Chen
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引用次数: 6

Abstract

Most existing 3D reconstruction methods result in either detail loss or unsatisfying efficiency. However, effectiveness and efficiency are equally crucial in real-world applications, e.g., autonomous driving and augmented reality. We argue that this dilemma comes from wasted resources on valueless depth samples. This paper tackles the problem by proposing a novel learning-based 3D reconstruction framework named Dionysus. Our main contribution is to find out the most promising depth candidates from estimated semantic maps. This strategy simultaneously enables high effectiveness and efficiency by attending to the most reliable nominators. Specifically, we distinguish unreliable depth candidates by checking the cross-view semantic consistency and allow adaptive sampling by redistributing depth nominators among pixels. Experiments on the most popular datasets confirm our proposed framework's effectiveness.
酒神:通过划分语义片段来恢复场景结构
现有的三维重建方法要么存在细节丢失的问题,要么存在效率不高的问题。然而,在自动驾驶和增强现实等现实应用中,有效性和效率同样至关重要。我们认为这种困境来自于浪费在毫无价值的深度样本上的资源。本文通过提出一种新的基于学习的三维重建框架Dionysus来解决这个问题。我们的主要贡献是从估计的语义图中找出最有希望的深度候选。这一策略通过关注最可靠的提名者,同时实现了高效率和高效率。具体来说,我们通过检查跨视图语义一致性来区分不可靠的深度候选,并通过在像素之间重新分配深度提名来进行自适应采样。在最流行的数据集上的实验证实了我们提出的框架的有效性。
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