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Combining Semantic and Geometric Features for Object Class Segmentation of Indoor Scenes

机译:结合语义和几何特征进行室内场景目标分类

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摘要

Scene understanding is a necessary prerequisite for robots acting autonomously in complex environments. Low-cost RGB-D cameras such as Microsoft Kinect enabled new methods for analyzing indoor scenes and are now ubiquitously used in indoor robotics. We investigate strategies for efficient pixelwise object class labeling of indoor scenes that combine both pretrained semantic features transferred from a large color image dataset and geometric features, computed relative to the room structures, including a novel distance-from-wall feature, which encodes the proximity of scene points to a detected major wall of the room. We evaluate our approach on the popular NYU v2 dataset. Several deep learning models are tested, which are designed to exploit different characteristics of the data. This includes feature learning with two different pooling sizes. Our results indicate that combining semantic and geometric features yields significantly improved results for the task of object class segmentation.
机译:场景理解是机器人在复杂环境中自主行动的必要先决条件。诸如Microsoft Kinect之类的低成本RGB-D摄像机启用了用于分析室内场景的新方法,如今已广泛用于室内机器人中。我们研究了对室内场景进行有效的像素级对象分类标记的策略,该策略结合了从大型彩色图像数据集转移来的预训练语义特征和相对于房间结构计算出的几何特征,包括对距离进行编码的新颖的壁距特征场景点指向检测到的房间长城。我们在流行的NYU v2数据集上评估我们的方法。测试了几种深度学习模型,这些模型旨在利用数据的不同特征。这包括具有两种不同池大小的功能学习。我们的结果表明,将语义和几何特征相结合可显着改善对象类别分割任务的结果。

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