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Intelligent Wavelet Based Pre-Filtering Method for Ultrasonic Sensor Fusion Inverse Algorithm Performance Optimization

机译:基于智能小波的超声波传感器融合逆算法性能优化的预滤波预滤波方法

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Certain obstacle mapping applications require the live evaluation of the measured data to prevent collision with obstacles. The fusion of different or similar sensors usually has a high calculation demand, which increases significantly with the area to be evaluated and the number of sensors. In the present considerations, we propose a wavelet-based adaptive optimization method, which can greatly decrease the number of grid points to be evaluated, and thus the necessary computation time. The basis of the method is to use the fact that the areas to be evaluated mostly face a rather small number of obstacles, which cover a smaller percentage of the whole environment. The first step in a pre-filtering process is the determination of the zones where no obstacles are present. This step can already result in a considerable decrease in the computation time, however with the transformation to polar coordinates, the method will not only be more fitted to the problem to be solved, but the area of the evaluation can also be increased with the same number of grid points. As a last step, we applied wavelet transformation to identify the regions of interest, where the application of a refined raster is necessary, and thus further decreasing the number of grid points where the calculation has to be carried out. We used our previously developed probability-based ultrasonic sensor fusion inverse algorithm to demonstrate the efficiency of the proposed method.
机译:某些障碍映射应用需要测量数据的实时评估,以防止与障碍物碰撞。不同或类似的传感器的融合通常具有高的计算需求,这与要评估的区域和传感器的数量显着增加。在本注意事项中,我们提出了一种基于小波的自适应优化方法,它可以大大降低要评估的网格点数,从而大大降低所需的计算时间。该方法的基础是利用该方法的事实:要评估的区域大多面对相当少量的障碍物,这涵盖了整个环境的较小百分比。预过滤过程中的第一步是确定不存在障碍物的区域。该步骤已经可以导致计算时间相当大的降低,但是随着对极性坐标的转换,该方法不仅可以更适合要解决的问题,但评估的区域也可以用相同增加网格点数。作为最后一步,我们应用了小波变换来识别感兴趣的区域,其中需要一种精致的光栅,从而进一步降低了计算必须进行计算的网格点数。我们利用先前开发的基于概率的超声波传感器融合逆算法来证明所提出的方法的效率。

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