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Tiny-PULP-Dronets: Squeezing Neural Networks for Faster and Lighter Inference on Multi-Tasking Autonomous Nano-Drones

Lorenzo Lamberti, Vlad Niculescu, Michał Barciś, Lorenzo Bellone, Enrico Natalizio, Luca Benini, Daniele Palossi

20222022 IEEE 4th International Conference on Artificial Intelligence Circuits and Systems (AICAS)24 citationsDOI

Abstract

Pocket-sized autonomous nano-drones can revolutionize many robotic use cases, such as visual inspection in narrow, constrained spaces and ensure safer human-robot interaction due to their tiny form factor and weight - i.e., tens of grams. This compelling vision is challenged by the high level of intelligence needed aboard, which clashes against the limited computational and storage resources available on PULP (parallel-ultra-low-power) MCU class navigation and mission controllers that can be hosted aboard. This work moves from PULP-Dronet, a State-of-the-Art convolutional neural network for autonomous navigation on nano-drones. We introduce Tiny-PULP-Dronet: a novel methodology to squeeze by more than one order of magnitude model size (50× fewer parameters), and number of operations (27× less multiply-and-accumulate) required to run inference with similar flight performance as PULP-Dronet. This massive reduction paves the way towards affordable multi-tasking on nano-drones, a fundamental requirement for achieving high-level intelligence.

Topics & Concepts

DroneSAFERComputer scienceConvolutional neural networkRobotArtificial intelligencePulp (tooth)InferenceEmbedded systemReal-time computingComputer securityBiologyGeneticsPathologyMedicineAdvanced Neural Network ApplicationsRobotics and Sensor-Based LocalizationMachine Learning and ELM
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