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Spectral saliency model for an appearance only SLAM in an indoor environment

机译:室内环境中仅外观SLAM的光谱显着性模型

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Simultaneous Localization and Mapping, SLAM, is a prime requirement for autonomous navigation and it is an integral part of a modern robot. An incremental appearance only SLAM based on non-quantized local features drastically suffers from large number of landmarks detected in the captured imagery. In order to decrease the number of landmarks, we propose a visual saliency model that is used as first stage in a SLAM algorithm; whereby it detects a small region (25% of image) in the captured imagery. This small region consists of those salient landmarks which are most conspicuous in the surrounding and brain gives more important to them. Only landmarks lying within the selected small salient region of the image are considered for use in the SLAM algorithm. The saliency stage of the algorithm we present is based on a spectral visual saliency model. We analyze its efficacy in terms of Receiver Operating Characteristic, ROC, and shuffled Area Under the Curve, sAUC, based on human fixation data tested on a popular dataset. In the second stage a tailored form of an existing SLAM framework is used to verify the applicability of the proposed saliency stage in a SLAM application. Finally, we use an indoor dataset and with numerous simulations of different parameters of SLAM to show the effectiveness of the proposed approach.
机译:同步定位和制图(SLAM)是自主导航的主要要求,并且是现代机器人的组成部分。基于未量化局部特征的仅增量外观SLAM严重遭受了在捕获图像中检测到的大量界标的困扰。为了减少地标的数量,我们提出了一种视觉显着性模型,该模型在SLAM算法中用作第一阶段。从而在捕获的图像中检测出一个很小的区域(占图像的25%)。这个小区域由那些在周围环境中最显着的显着地标组成,而大脑对它们更重要。仅将位于图像的选定小显着区域内的界标用于SLAM算法。我们提出的算法的显着性阶段基于光谱视觉显着性模型。我们根据在流行数据集上测试的人体固定数据,根据接收器操作特性,ROC和曲线下的混洗面积sAUC来分析其功效。在第二阶段,使用现有SLAM框架的定制形式来验证建议的显着性阶段在SLAM应用程序中的适用性。最后,我们使用室内数据集并通过对SLAM的不同参数进行大量仿真来证明所提出方法的有效性。

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