Autonomous vehicles and mobile robotic systems are typically equipped with multiple sensors to provide redundancy. By integrating the observations from different sensors, these mobile agents are able to perceive the environment and estimate system states, e.g. locations and orientations. Although deep learning approaches for multimodal odometry estimation and localization have gained traction, they rarely focus on the issue of robust sensor fusion - a necessary consideration to deal with noisy or incomplete sensor observations in the real world. Moreover, current deep odometry models suffer from a lack of interpretability. To this extent, we propose SelectFusion, an end-to-end selective sensor fusion module which can be applied to useful pairs of sensor modalities such as monocular images and inertial measurements, depth images and LIDAR point clouds. Our model is a uniform framework that is not restricted to specific modality or task. During prediction, the network is able to assess the reliability of the latent features from different sensor modalities and estimate trajectory both at scale and global pose. In particular, we propose two fusion modules - a deterministic soft fusion and a stochastic hard fusion, and offer a comprehensive study of the new strategies compared to trivial direct fusion. We extensively evaluate all fusion strategies in both public datasets and on progressively degraded datasets that present synthetic occlusions, noisy and missing data and time misalignment between sensors, and we investigate the effectiveness of the different fusion strategies in attending the most reliable features, which in itself, provides insights into the operation of the various models.
翻译:自主车辆和移动机器人系统通常配备多种传感器,以提供冗余。通过整合不同传感器的观测,这些移动剂能够感知环境和估计系统状态,例如地点和方向。虽然多式偏差估计和地方化的深入学习方法已获得牵引,但它们很少注重强力传感器聚变问题 -- -- 这是处理现实世界中噪音或不完整传感器观测的一个必要考虑。此外,目前的深异位测量模型缺乏解释性。在这方面,我们提议了SpeetFusion,即一个端到端选择性传感器聚变模块,可应用于诸如单子图像和惯性测量、深度图像和LIDAR点云等有用的传感器操作模式组合。我们的模型是一个不局限于特定模式或任务的统一框架。在预测期间,该网络能够评估不同传感器模式的潜在特征的可靠性,以及规模和全球面的轨迹。我们提议了两个混合模块 -- -- 确定性软聚变软和分解硬聚合模块,可用于对单质图像图像图像和惯性测量、深度图像整合新战略进行全面研究,并将当前各种数据流流流流流数据与数据流流化数据进行全面分析。