论文标题
通过偏见控制和评估事件摄像机输出清晰度
Control and Evaluation of Event Cameras Output Sharpness via Bias
论文作者
论文摘要
事件摄像机也称为神经形态传感器是一种相对的新技术,对RGB摄像机具有一定的特权。最重要的是它们在捕获环境的光变化方面的差异,每个像素在捕获环境光的变化时都独立于其他像素变化。为了提高用户控制这些相机输出的自由度,例如改变传感器对照明变化的敏感性,控制生成的事件的数量和其他类似操作,相机制造商通常会引入一些工具来对相机设置进行传感器级别的变化。这项研究的贡献是检查和记录更改传感器设置对清晰度的影响,以表明生成的事件数据流的质量。为了使该事件流的定性理解转换为帧,然后将平均图像梯度幅度作为边缘数量的索引,并因此计算了这些帧的清晰度。解释了五种不同的偏见设置,并对事件输出的变化效果进行了调查和分析。此外,通过模拟电路模型来解释事件摄像机传感阵列的操作,并且偏置基础的功能与此模型相关联。
Event cameras also known as neuromorphic sensors are relatively a new technology with some privilege over the RGB cameras. The most important one is their difference in capturing the light changes in the environment, each pixel changes independently from the others when it captures a change in the environment light. To increase the users degree of freedom in controlling the output of these cameras, such as changing the sensitivity of the sensor to light changes, controlling the number of generated events and other similar operations, the camera manufacturers usually introduce some tools to make sensor level changes in camera settings. The contribution of this research is to examine and document the effects of changing the sensor settings on the sharpness as an indicator of quality of the generated stream of event data. To have a qualitative understanding this stream of event is converted to frames, then the average image gradient magnitude as an index of the number of edges and accordingly sharpness is calculated for these frames. Five different bias settings are explained and the effect of their change in the event output is surveyed and analyzed. In addition, the operation of the event camera sensing array is explained with an analogue circuit model and the functions of the bias foundations are linked with this model.