The 3D reconstruction of simultaneous localization and mapping (SLAM) is an
important topic in the field for transport systems such as drones, service
robots and mobile AR/VR devices. Compared to a point cloud representation, the
3D reconstruction based on meshes and voxels is particularly useful for
high-level functions, like obstacle avoidance or interaction with the physical
environment. This article reviews the implementation of a visual-based 3D scene
reconstruction pipeline on resource-constrained hardware platforms. Real-time
performances, memory management and low power consumption are critical for
embedded systems. A conventional SLAM pipeline from sensors to 3D
reconstruction is described, including the potential use of deep learning. The
implementation of advanced functions with limited resources is detailed. Recent
systems propose the embedded implementation of 3D reconstruction methods with
different granularities. The trade-off between required accuracy and resource
consumption for real-time localization and reconstruction is one of the open
research questions identified and discussed in this paper