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An Approach for Construct Semantic Map with Scene Classification and Object Semantic Segmentation

机译:使用场景分类和对象语义分割构建语义映射的方法

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The autonomous navigation system of human beings is more efficient than artificial intelligence technologies, as prior knowledge such as semantic information of the objects and environment is effectively utilized by humans in complicated tasks. Therefore, the ability to build a complete and efficient semantic map system is critical for robot autonomous navigation. In this article, we propose a new framework for building an environment semantic map. Specifically, we construct a 2D semantic map by projecting 3D scene semantic information recognized by convolutional neural network onto a 2D plane. 3D reconstruction of the environment is achieved by RGB-D SLAM 3D space mapping algorithm. We simplify the 3D clustering connectability, using only three cues, to achieve real-time boundary-aware detection of foreground objects. The network trained on the public benchmark dataset is employed to classify the material of the foreground extraction object. Experimental results have demonstrated that the proposed framework is effective in the contraction of semantic map and can be efficiently utilized in the real-time semantic slam system.
机译:人工智能技术的自主导航系统比人工智能技术更有效,因为人类在复杂任务中有效地利用了对象和环境的语义信息等知识。因此,构建完整有效的语义地图系统的能力对于机器人自主导航至关重要。在本文中,我们向构建环境语义地图提出了一个新的框架。具体地,我们通过将卷积神经网络识别的3D场景语义信息投影到2D平面来构建2D语义地图。 RGB-D SLAM 3D空间映射算法实现了环境的三维重建。我们只使用三个线索简化了3D聚类可连接性,实现了前景对象的实时边界感知检测。采用在公共基层数据集上培训的网络来分类前台提取对象的材料。实验结果表明,所提出的框架在语义地图的收缩中是有效的,并且可以在实时语义SLAM系统中有效地利用。

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