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Converting Static Image Datasets to Spiking Neuromorphic Datasets Using Saccades

机译:使用扫视将静态图像数据集转换为尖峰神经形态数据集

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摘要

Creating datasets for Neuromorphic Vision is a challenging task. A lack of available recordings from Neuromorphic Vision sensors means that data must typically be recorded specifically for dataset creation rather than collecting and labeling existing data. The task is further complicated by a desire to simultaneously provide traditional frame-based recordings to allow for direct comparison with traditional Computer Vision algorithms. Here we propose a method for converting existing Computer Vision static image datasets into Neuromorphic Vision datasets using an actuated pan-tilt camera platform. Moving the sensor rather than the scene or image is a more biologically realistic approach to sensing and eliminates timing artifacts introduced by monitor updates when simulating motion on a computer monitor. We present conversion of two popular image datasets (MNIST and Caltech101) which have played important roles in the development of Computer Vision, and we provide performance metrics on these datasets using spike-based recognition algorithms. This work contributes datasets for future use in the field, as well as results from spike-based algorithms against which future works can compare. Furthermore, by converting datasets already popular in Computer Vision, we enable more direct comparison with frame-based approaches.
机译:为Neuromorphic Vision创建数据集是一项艰巨的任务。 Neuromorphic Vision传感器缺少可用的记录,这意味着通常必须专门为创建数据集记录数据,而不是收集和标记现有数据。由于希望同时提供传统的基于帧的记录以允许与传统的计算机视觉算法进行直接比较,因此使任务更加复杂。在这里,我们提出了一种使用促动的云台摄像机平台将现有计算机视觉静态图像数据集转换为神经形态视觉数据集的方法。在计算机上模拟运动时,移动传感器而不是场景或图像是一种生物学上更现实的方法,可以消除并消除由监视器更新引入的定时伪像。我们介绍了两个流行的图像数据集(MNIST和Caltech101)的转换,它们在Computer Vision的开发中发挥了重要作用,并使用基于尖峰的识别算法在这些数据集上提供了性能指标。这项工作有助于将来在该领域中使用的数据集,以及基于峰值的算法的结果,可以与未来的工作进行比较。此外,通过转换已经在Computer Vision中流行的数据集,我们可以与基于框架的方法进行更直接的比较。

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