Dynamic vision sensors are able to operate at high temporal resolutions within resource constrained environments, though at the expense of capturing static content. The sparse nature of event streams enables efficient downstream processing tasks as they are suited for power-efficient spiking neural networks. One of the challenges associated with neuromorphic vision is the lack of interpretability of event streams. While most application use-cases do not intend for the event stream to be visually interpreted by anything other than a classification network, there is a lost opportunity to integrating these sensors in spaces that conventional high-speed CMOS sensors cannot go. For example, biologically invasive sensors such as endoscopes must fit within stringent power budgets, which do not allow MHz-speeds of image integration. While dynamic vision sensing can fill this void, the interpretation challenge remains and will degrade confidence in clinical diagnostics. The use of generative adversarial networks presents a possible solution to overcoming and compensating for a vision chip's poor spatial resolution and lack of interpretability. In this paper, we methodically apply the Pix2Pix network to naturalize the event stream from spike-converted CIFAR-10 and Linnaeus 5 datasets. The quality of the network is benchmarked by performing image classification of naturalized event streams, which converges to within 2.81% of equivalent raw images, and an associated improvement over unprocessed event streams by 13.19% for the CIFAR-10 and Linnaeus 5 datasets.
翻译:动态视觉传感器能够在资源受限的环境下以高时间分辨率运作,尽管以牺牲静态内容为代价。事件流的稀少性质使得高效下游处理任务能够高效的下游处理任务,因为这些任务适合电效高效的突射神经网络。与神经形态视觉相关的挑战之一是缺乏对事件流的可解释性。虽然大多数应用使用案例并不打算让事件流被除分类网络以外的任何东西视觉解释,但将这些传感器纳入常规高速 CMOS 传感器无法去的空间却失去了机会。例如,内镜等生物入侵传感器必须适合严格的电源预算,这不允许图像集成的超速。虽然动态视觉感测能够填补这一空白,但解释挑战依然存在,并将降低临床诊断中的信任度。使用基因化的对立式对立式对抗性网络为克服和补偿视觉芯片的空间分辨率差和缺乏解释性的可能性提供了一种可能的解决办法。在本文中,我们有条理地应用 Pix2Pixix 网络将事件流的自然化成自然化流,从钉反向的 CIRFAR-10和Linnaeus 5 Rental mas regild 这样的事件流中, 通过对5 Rass salal sal sal sal sal sal sal sal sqal sal sqal sal sqlations sqrealselations squalations.