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Unsupervised Feature Learning for Event Data: Direct vs Inverse Problem Formulation

机译:事件数据的无监督特征学习:直接与逆问题配方

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Event-based cameras record an asynchronous stream of per-pixel brightness changes. As such, they have numerous advantages over the standard frame-based cameras, including high temporal resolution, high dynamic range, and no motion blur. Due to the asynchronous nature, efficient learning of compact representation for event data is challenging. While it remains not explored the extent to which the spatial and temporal event “information” is useful for pattern recognition tasks. In this paper, we focus on single-layer architectures. We analyze the performance of two general problem formulations: the direct and the inverse, for unsupervised feature learning from local event data (local volumes of events described in space-time). We identify and show the main advantages of each approach. Theoretically, we analyze guarantees for an optimal solution, possibility for asynchronous, parallel parameter update, and the computational complexity. We present numerical experiments for object recognition. We evaluate the solution under the direct and the inverse problem and give a comparison with the state-of-the-art methods. Our empirical results highlight the advantages of both approaches for representation learning from event data. We show improvements of up to 9% in the recognition accuracy compared to the state-of-the-art methods from the same class of methods.
机译:基于事件的相机记录每个像素亮度变化的异步流。因此,它们具有众多优于标准帧的相机,包括高时分辨率,高动态范围,并且没有运动模糊。由于异步性质,有效地学习事件数据的紧凑型表示是具有挑战性的。虽然它仍未探索空间和时间事件“信息”对模式识别任务有用的程度。在本文中,我们专注于单层架构。我们分析了两个一般问题配方的性能:直接和反向,对于从本地事件数据(时空中描述的本地事件的本地事件)来学习无监督功能。我们识别并显示每个方法的主要优点。从理论上,我们分析了最佳解决方案的保证,异步,并行参数更新和计算复杂性的可能性。我们提供了对象识别的数值实验。我们根据直接和逆问题评估解决方案,并与最先进的方法进行比较。我们的经验结果突出了两种方法从事件数据学习的方法的优势。与来自同一类方法的最先进的方法相比,我们显示了识别准确性最高9%的改善。

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