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Convolutional Neural Network-Based Robot Navigation Using Uncalibrated Spherical Images ?

机译:使用未校准球面图像的基于卷积神经网络的机器人导航

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Vision-based mobile robot navigation is a vibrant area of research with numerous algorithms having been developed, the vast majority of which either belong to the scene-oriented simultaneous localization and mapping (SLAM) or fall into the category of robot-oriented lane-detection/trajectory tracking. These methods suffer from high computational cost and require stringent labelling and calibration efforts. To address these challenges, this paper proposes a lightweight robot navigation framework based purely on uncalibrated spherical images. To simplify the orientation estimation, path prediction and improve computational efficiency, the navigation problem is decomposed into a series of classification tasks. To mitigate the adverse effects of insufficient negative samples in the “navigation via classification” task, we introduce the spherical camera for scene capturing, which enables 360° fisheye panorama as training samples and generation of sufficient positive and negative heading directions. The classification is implemented as an end-to-end Convolutional Neural Network (CNN), trained on our proposed Spherical-Navi image dataset, whose category labels can be efficiently collected. This CNN is capable of predicting potential path directions with high confidence levels based on a single, uncalibrated spherical image. Experimental results demonstrate that the proposed framework outperforms competing ones in realistic applications.
机译:基于视觉的移动机器人导航是一个充满活力的研究领域,已经开发了许多算法,其中绝大多数要么属于面向场景的同时定位和制图(SLAM),要么属于面向机器人的车道检测类别/轨迹跟踪。这些方法计算成本高,并且需要严格的标记和校准工作。为了解决这些挑战,本文提出了一种纯粹基于未经校准的球形图像的轻型机器人导航框架。为了简化方向估计,路径预测并提高计算效率,将导航问题分解为一系列分类任务。为了减轻“分类导航”任务中负样本不足的不利影响,我们引入了用于场景捕获的球形摄像机,该摄像机可将360°鱼眼全景图用作训练样本并生成足够的正和负航向。该分类通过端到端的卷积神经网络(CNN)实现,并在我们提出的Spherical-Navi图像数据集上进行了训练,该数据集的类别标签可以得到有效收集。该CNN能够基于单个未校准的球形图像以高置信度预测潜在的路径方向。实验结果表明,提出的框架在实际应用中优于竞争对手。

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