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A Plane Extraction Approach in Inverse Depth Images Based on Region-Growing

机译:基于区域生长的逆深度图像平面提取方法

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摘要

Planar surfaces are prevalent components of man-made indoor scenes, and plane extraction plays a vital role in practical applications of computer vision and robotics, such as scene understanding, and mobile manipulation. Nowadays, most plane extraction methods are based on reconstruction of the scene. In this paper, plane representation is formulated in inverse-depth images. Based on this representation, we explored the potential to extract planes in images directly. A fast plane extraction approach, which employs the region growing algorithm in inverse-depth images, is presented. This approach consists of two main components: seeding, and region growing. In the seeding component, seeds are carefully selected locally in grid cells to improve exploration efficiency. After seeding, each seed begins to grow into a continuous plane in succession. Both greedy policy and a normal coherence check are employed to find boundaries accurately. During growth, neighbor coplanar planes are checked and merged to overcome the over-segmentation problem. Through experiments on public datasets and generated saw-tooth images, the proposed approach achieves 80.2% CDR (Correct Detection Rate) on the ABW SegComp Dataset, which has proven that it has comparable performance with the state-of-the-art. The proposed approach runs at 5 Hz on typical 680 × 480 images, which has shown its potential in real-time practical applications in computer vision and robotics with further improvement.
机译:平面表面是人造室内场景的普遍组分,平面提取在计算机视觉和机器人的实际应用中起着至关重要的作用,例如场景理解和移动操纵。如今,大多数平面提取方法都基于场景的重建。在本文中,平面表示在逆深度图像中配制。根据此代表,我们探讨了直接提取图像中的平面的潜力。呈现了一种快速平面提取方法,其采用在逆深度图像中采用区域生长算法。这种方法包括两个主要成分:播种和地区生长。在播种组分中,种子在网格细胞中局部仔细选择,以提高勘探效率。在播种之后,每种种子开始成长成连续平面。贪婪的政策和正常的一致性检查都被用来准确地找到边界。在增长期间,检查并合并邻居共面飞机以克服过度分割问题。通过对公共数据集的实验和生成的锯齿图像,所提出的方法在ABW SEGCOMP数据集上实现了80.2%的CDR(正确的检测率),证明它具有最先进的性能。所提出的方法在典型的680×480图像上以5 Hz运行,其在计算机视觉和机器人中的实时实际应用中显示了其潜力,具有进一步的改进。

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