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Evaluation of Event-Based Algorithms for Optical Flow with Ground-Truth from Inertial Measurement Sensor

机译:基于事件的惯性测量传感器对地真光流算法的评估

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摘要

In this study we compare nine optical flow algorithms that locally measure the flow normal to edges according to accuracy and computation cost. In contrast to conventional, frame-based motion flow algorithms, our open-source implementations compute optical flow based on address-events from a neuromorphic Dynamic Vision Sensor (DVS). For this benchmarking we created a dataset of two synthesized and three real samples recorded from a 240 × 180 pixel Dynamic and Active-pixel Vision Sensor (DAVIS). This dataset contains events from the DVS as well as conventional frames to support testing state-of-the-art frame-based methods. We introduce a new source for the ground truth: In the special case that the perceived motion stems solely from a rotation of the vision sensor around its three camera axes, the true optical flow can be estimated using gyro data from the inertial measurement unit integrated with the DAVIS camera. This provides a ground-truth to which we can compare algorithms that measure optical flow by means of motion cues. An analysis of error sources led to the use of a refractory period, more accurate numerical derivatives and a Savitzky-Golay filter to achieve significant improvements in accuracy. Our pure Java implementations of two recently published algorithms reduce computational cost by up to 29% compared to the original implementations. Two of the algorithms introduced in this paper further speed up processing by a factor of 10 compared with the original implementations, at equal or better accuracy. On a desktop PC, they run in real-time on dense natural input recorded by a DAVIS camera.
机译:在这项研究中,我们比较了九种光流算法,这些算法根据精度和计算成本来局部测量垂直于边缘的流。与传统的基于帧的运动流算法相比,我们的开源实现基于来自神经形态动态视觉传感器(DVS)的地址事件来计算光流。为了进行基准测试,我们创建了一个由240×180像素动态和有源像素视觉传感器(DAVIS)记录的两个合成样本和三个真实样本的数据集。该数据集包含来自DVS以及传统框架的事件,以支持测试基于框架的最新技术。我们为地面真相引入了一个新的来源:在特殊情况下,感知到的运动完全来自视觉传感器绕其三个相机轴的旋转,可以使用来自集成有惯性测量单元的陀螺仪数据来估算真实的光流DAVIS相机。这提供了一个事实真相,我们可以通过运动线索来比较测量光流的算法。通过对误差源进行分析,可以使用不应期,更精确的数值导数和Savitzky-Golay滤波器来显着提高精度。与原始实现相比,我们的两种最新发布算法的纯Java实现将计算成本降低了29%。与原始实现相比,本文介绍的两种算法将处理速度进一步提高了10倍,且精度相同或更高。在台式PC上,它们可以在DAVIS摄像机记录的密集自然输入下实时运行。

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