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Improving vision-based obstacle detection on USV using inertial sensor

机译:使用惯性传感器改善USV的视觉障碍物检测

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We present a new semantic segmentation algorithm for obstacle detection in unmanned surface vehicles. The novelty lies in the graphical model that incorporates boat tilt measurements from the on-board inertial measurement unit (IMU). The IMU readings are used to estimate the location of horizon line in the image, and automatically adjusts the priors in the probabilistic semantic segmentation algorithm. We derive the necessary horizon projection equations, an efficient optimization algorithm for the proposed graphical model, and a practical IMU-camera-USV calibration. A new challenging dataset, which is the largest multi-sensor dataset of its kind, is constructed. Results show that the proposed algorithm significantly outperforms state of the art, with 32% improvement in water-edge detection accuracy, an over 15% reduction of false positive rate, an over 70 % reduction of false negative rate, and an over 55% increase of true positive rate, while running in real-time on a single core in Matlab.
机译:我们在无人面车辆中展示了一种新的语义分割算法,用于障碍物检测。新颖性在于从板载惯性测量单元(IMU)中包含船倾斜测量的图形模型。 IMU读数用于估计图像中地平线线的位置,并自动调整概率语义分割算法中的前沿。我们推出了所需的地平线投影方程,是所提出的图形模型的有效优化算法,以及实用的IMU-Camera-USV校准。构建了一个新的具有挑战性的数据集,它是其类型的最大的多传感器数据集。结果表明,该算法明显优于现有技术,水边检测精度提高32%,减少了假阳性率的15%,减少了70%以上,增加了55%以上真正的阳性率,同时实时运行在Matlab中的单一核心。

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