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P. Z. X. Li, S. Karaman, V. Sze, “GMMap: Memory-Efficient Continuous Occupancy Map Using Gaussian Mixture Model,” IEEE Transactions on Robotics (T-RO), Vol. 40, pp. 1339 – 1355, January 2024 Paper: https://arxiv.org/abs/2306.03740 Code: https://github.com/mit-lean/GMMap Abstract: Energy consumption of memory accesses dominates the compute energy in energy-constrained robots which require a compact 3D map of the environment to achieve autonomy. Recent mapping frameworks only focused on reducing the map size while incurring significant memory usage during map construction due to multi-pass processing of each depth image. In this work, we present a memory-efficient continuous occupancy map, named GMMap, that accurately models the 3D environment using a Gaussian Mixture Model (GMM). Memory-efficient GMMap construction is enabled by the single-pass compression of depth images into local GMMs which are directly fused together into a globally-consistent map. By extending Gaussian Mixture Regression to model unexplored regions, occupancy probability is directly computed from Gaussians. Using a low-power ARM Cortex A57 CPU, GMMap can be constructed in real-time at up to 60 images per second. Compared with prior works, GMMap maintains high accuracy while reducing the map size by at least 56%, memory overhead by at least 88%, DRAM access by at least 78%, and energy consumption by at least 69%. Thus, GMMap enables real-time 3D mapping on energy-constrained robots. Information about accessibility can be found at https://accessibility.mit.edu/