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Blurring prediction in monocular SLAM

机译:单眼SLAM中的模糊预测

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The paper presents a method aiming at improving the reliability of Simultaneous Localization And Mapping (SLAM) approaches based on vision systems. Classical SLAM approaches treat camera capturing time as negligible, and the recorded frames as sharp and well-defined, but this hypothesis does not hold true when the camera is moving too fast. In such cases, in fact, frames may be severely degraded by motion blur, making features matching task a difficult operation. The method here presented is based on a novel approach that combines the benefits of a fully probabilistic SLAM algorithm with the basic ideas behind modern motion blur handling algorithms. Whereby the Kalman Filter, the new approach predicts the best possible blur Point Spread Function (PSF) for each feature and performs matching using also this information.
机译:本文提出了一种旨在提高基于视觉系统的同时定位和制图(SLAM)方法的可靠性的方法。经典的SLAM方法将摄像机的捕获时间视为可忽略的时间,并且将记录的帧视为清晰且清晰的帧,但是当摄像机移动得太快时,这种假设就不成立。在这种情况下,实际上,帧可能会因运动模糊而严重劣化,从而使与任务匹配的功能难以操作。这里介绍的方法基于一种新颖的方法,该方法结合了完全概率SLAM算法的优势和现代运动模糊处理算法背后的基本思想。从而借助卡尔曼滤波器,新方法可以为每个功能预测最佳的模糊点扩展函数(PSF),并使用此信息进行匹配。

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