Stereo camera systems play an important role in robotics applications to perceive the 3D world. However, conventional cameras have drawbacks such as low dynamic range, motion blur and latency due to the underlying frame-based mechanism. Event cameras address these limitations as they report the brightness changes of each pixel independently with a fine temporal resolution, but they are unable to acquire absolute intensity information directly. Although integrated hybrid event-frame sensors (eg., DAVIS) are available, the quality of data is compromised by coupling at the pixel level in the circuit fabrication of such cameras. This paper proposes a stereo hybrid event-frame (SHEF) camera system that offers a sensor modality with separate high-quality pure event and pure frame cameras, overcoming the limitations of each separate sensor and allowing for stereo depth estimation. We provide a SHEF dataset targeted at evaluating disparity estimation algorithms and introduce a stereo disparity estimation algorithm that uses edge information extracted from the event stream correlated with the edge detected in the frame data. Our disparity estimation outperforms the state-of-the-art stereo matching algorithm on the SHEF dataset.
翻译:立体照相机系统在机器人应用中发挥重要作用,以感知三维世界。然而,常规照相机由于基于基底框架的机制而存在低动态范围、运动模糊和延迟等缺陷。事件照相机处理这些局限性,因为它们独立报告每个像素的亮度变化,且具有细微的时间分辨率,但它们无法直接获得绝对强度信息。虽然综合混合事件框架传感器(如DAVIS)存在,但数据的质量由于在像素级的像素级相联而受到影响。本文提议采用立体混合事件框架(SHEF)摄影机系统,提供一种传感器模式,配有单独的高质量纯度事件和纯度框架摄像机,克服每个不同的传感器的局限性,并允许进行立体深度估计。我们提供一套SHEF数据集,目的是评估差异估计算法,并采用立体差异估计算法,利用从事件流中提取的边缘与框架数据所检测的边缘关系来得出的边缘信息。我们的差异估计值高于SHEF数据集的状态和立体相匹配的立体算法。