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Parsing Geometry Using Structure-Aware Shape Templates

机译:使用结构感知形状模板解析几何

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Real-life man-made objects often exhibit strong and easily-identifiable structure, as a direct result of their design or their intended functionality. Structure typically appears in the form of individual parts and their arrangement. Knowing about object structure can be an important cue for object recognition and scene understanding - a key goal for various AR and robotics applications. However, commodity RGB-D sensors used in these scenarios only produce raw, unorganized point clouds, without structural information about the captured scene. Moreover, the generated data is commonly partial and susceptible to artifacts and noise, which makes inferring the structure of scanned objects challenging. In this paper, we organize large shape collections into parameterized shape templates to capture the underlying structure of the objects. The templates allow us to transfer the structural information onto new objects and incomplete scans. We employ a deep neural network that matches the partial scan with one of the shape templates, then match and fit it to complete and detailed models from the collection. This allows us to faithfully label its parts and to guide the reconstruction of the scanned object. We showcase the effectiveness of our method by comparing it to other state-of-the-art approaches.
机译:现实生活的物体经常表现出强大且易识别的结构,作为其设计的直接结果或其预期功能。结构通常出现以各个部件的形式及其排列。了解对象结构可以是对象识别和场景理解的重要提示 - 各种AR和机器人应用的关键目标。然而,在这些场景中使用的商品RGB-D传感器仅产生原始的未经用成点云,而无需有关捕获的场景的结构信息。此外,所产生的数据通常是部分的并且易于伪影和噪声影响,这使得推断扫描物体的结构具有挑战性。在本文中,我们将大型形状集合组织成参数化形状模板,以捕获对象的底层结构。模板允许我们将结构信息转移到新对象和不完整的扫描中。我们使用一个深度神经网络,与其中一个形状模板匹配部分扫描,然后匹配并符合从集合中完成和详细的模型。这使我们能够忠实地标记其部件并引导扫描对象的重建。我们通过将其与其他最先进的方法进行比较来展示我们方法的有效性。

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