In this paper, we propose EveRestNet, a convolutional neural network designed to remove blocking artifacts in videostreams using events from neuromorphic sensors. We first degrade the video frame using a quadtree structure to produce the blocking artifacts to simulate transmitting a video under a heavily constrained bandwidth. Events from the neuromorphic sensor are also simulated, but are transmitted in full. Using the distorted frames and the event stream, EveRestNet is able to improve the image quality.
翻译:在本文中,我们提出EveRestNet,这是一个革命性神经网络,目的是利用神经形态传感器的事件清除视频流中的屏蔽文物。我们首先使用四叶结构来制作屏蔽文物,以模拟在严重受限带宽下传输视频。神经形态传感器的事件也被模拟,但被完整传输。利用扭曲的框框和事件流,EveRestNet能够提高图像质量。