基于脉冲信号长短期时间聚合的彩色脉冲相机重建。

IF 13.7
Yanchen Dong;Ruiqin Xiong;Jing Zhao;Xiaopeng Fan;Xinfeng Zhang;Tiejun Huang
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引用次数: 0

摘要

随着新兴计算机视觉应用的普及,对捕捉高速运动的动态场景的需求日益增加。一种称为尖峰相机的神经形态传感器在这方面显示出很大的潜力,因为它产生一个二进制尖峰流,以非常高的时间分辨率来描述动态光强。彩色脉冲相机(CSC)是近年来发明的一种通过传感器上的彩色滤波阵列(CFA)来捕捉动态场景颜色信息的相机。本文提出了一种长、短期脉冲信号的时间聚合策略。首先,利用短期时间相关自适应提取各时间点的时间特征;然后,我们将特征对齐并聚合它们以利用长期时间相关性,抑制不希望的运动模糊。为了实现这一策略,我们设计了一个CSC重构网络。基于自适应短期时间聚合,我们提出了一个尖峰表示模块来提取每个颜色通道的时间特征,利用多个时间尺度。考虑到长期的时间相关性,我们开发了一个对齐模块来对齐时间特征。特别是,我们在更高采样率的绿色通道的指导下执行红色和蓝色通道的运动对齐,利用颜色通道之间的运动一致性。此外,我们还提出了一个利用颜色通道相关性对恢复后的彩色图像进行时序特征聚合的模块。我们还开发了一个用于数据生成的CSC模拟器。实验结果表明,该方法可以恢复具有精细纹理细节的彩色图像,达到了最先进的CSC重建性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Color Spike Camera Reconstruction via Long Short-Term Temporal Aggregation of Spike Signals
With the prevalence of emerging computer vision applications, the demand for capturing dynamic scenes with high-speed motion has increased. A kind of neuromorphic sensor called spike camera shows great potential in this aspect since it generates a stream of binary spikes to describe the dynamic light intensity with a very high temporal resolution. Color spike camera (CSC) was recently invented to capture the color information of dynamic scenes via a color filter array (CFA) on the sensor. This paper proposes a long short-term temporal aggregation strategy of spike signals. First, we utilize short-term temporal correlation to adaptively extract temporal features of each time point. Then we align the features and aggregate them to exploit long-term temporal correlation, suppressing undesired motion blur. To implement the strategy, we design a CSC reconstruction network. Based on adaptive short-term temporal aggregation, we propose a spike representation module to extract temporal features of each color channel, leveraging multiple temporal scales. Considering the long-term temporal correlation, we develop an alignment module to align the temporal features. In particular, we perform motion alignment of red and blue channels with the guidance of the higher-sampling-rate green channel, leveraging motion consistency among color channels. Besides, we propose a module to aggregate the aligned temporal features for the restored color image, which exploits color channel correlation. We have also developed a CSC simulator for data generation. Experimental results demonstrate that our method can restore color images with fine texture details, achieving state-of-the-art CSC reconstruction performance.
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