Miled Meriem Ben, Liu Wenwen, Liu Yuanchang
Department of Mechanical Engineering, University College London, London, UK.
School of Automation, Nanjing University of Information, Science and Technology, Nanjing, China.
Research (Wash D C). 2024 Apr 1;7:0330. doi: 10.34133/research.0330. eCollection 2024.
In the evolving landscape of robotics and visual navigation, event cameras have gained important traction, notably for their exceptional dynamic range, efficient power consumption, and low latency. Despite these advantages, conventional processing methods oversimplify the data into 2 dimensions, neglecting critical temporal information. To overcome this limitation, we propose a novel method that treats events as 3D time-discrete signals. Drawing inspiration from the intricate biological filtering systems inherent to the human visual apparatus, we have developed a 3D spatiotemporal filter based on unsupervised machine learning algorithm. This filter effectively reduces noise levels and performs data size reduction, with its parameters being dynamically adjusted based on population activity. This ensures adaptability and precision under various conditions, like changes in motion velocity and ambient lighting. In our novel validation approach, we first identify the noise type and determine its power spectral density in the event stream. We then apply a one-dimensional discrete fast Fourier transform to assess the filtered event data within the frequency domain, ensuring that the targeted noise frequencies are adequately reduced. Our research also delved into the impact of indoor lighting on event stream noise. Remarkably, our method led to a 37% decrease in the data point cloud, improving data quality in diverse outdoor settings.
在不断发展的机器人技术和视觉导航领域,事件相机已获得重要关注,特别是因其卓越的动态范围、高效的功耗和低延迟。尽管有这些优点,但传统处理方法将数据过度简化为二维,忽略了关键的时间信息。为克服这一限制,我们提出一种新颖的方法,将事件视为三维时间离散信号。借鉴人类视觉系统固有的复杂生物过滤系统,我们基于无监督机器学习算法开发了一种三维时空滤波器。该滤波器有效降低噪声水平并减少数据量,其参数根据群体活动动态调整。这确保了在各种条件下的适应性和精度,如运动速度和环境光照的变化。在我们新颖的验证方法中,我们首先识别噪声类型并确定其在事件流中的功率谱密度。然后我们应用一维离散快速傅里叶变换在频域中评估滤波后的事件数据,确保目标噪声频率得到充分降低。我们的研究还深入探讨了室内照明对事件流噪声的影响。值得注意的是,我们的方法使数据点云减少了37%,提高了各种户外场景下的数据质量。