Sparse representation has attracted great attention because it can greatly save storage re- sources and find representative features of data in a low-dimensional space. As a result, it may be widely applied in engineering domains including feature extraction, compressed sensing, signal denoising, picture clustering, and dictionary learning, just to name a few. In this paper, we propose a spiking sampling network. This network is composed of spiking neurons, and it can dynamically decide which pixel points should be retained and which ones need to be masked according to the input. Our experiments demonstrate that this approach enables better sparse representation of the original image and facilitates image reconstruction compared to random sampling. We thus use this approach for compressing massive data from the dynamic vision sensor, which greatly reduces the storage requirements for event data.
翻译:粗略的表示方式吸引了人们的极大关注,因为它可以大大节省存储的再源,并在低维空间找到数据的代表性特征。 因此,它可能会被广泛应用于工程领域,包括地物提取、压缩遥感、信号去除、图片集和字典学习,仅举几个例子。 在本文中,我们建议建立一个跳动的取样网络。这个网络由跳动的神经元组成,它可以动态地决定哪些像素点应该保留,哪些点需要根据输入来遮盖。 我们的实验表明,这个方法可以使原始图像的表达更加稀少,并且比随机取样更便于图像重建。 因此,我们用这个方法压缩动态视觉传感器的大量数据,这大大降低了事件数据的存储要求。