Litcius/Paper detail

Real-time semantic segmentation on FPGAs for autonomous vehicles with hls4ml

Nicolò Ghielmetti, Vladimir Lončar, M. Pierini, Marcel Roed, S. Summers, T. K. Aarrestad, Christoffer Petersson, Hampus Linander, J. Ngadiuba, Kelvin Lin, Philip Harris

2022Machine Learning Science and Technology32 citationsDOIOpen Access PDF

Abstract

Abstract In this paper, we investigate how field programmable gate arrays can serve as hardware accelerators for real-time semantic segmentation tasks relevant for autonomous driving. Considering compressed versions of the ENet convolutional neural network architecture, we demonstrate a fully-on-chip deployment with a latency of 4.9 ms per image, using less than 30% of the available resources on a Xilinx ZCU102 evaluation board. The latency is reduced to 3 ms per image when increasing the batch size to ten, corresponding to the use case where the autonomous vehicle receives inputs from multiple cameras simultaneously. We show, through aggressive filter reduction and heterogeneous quantization-aware training, and an optimized implementation of convolutional layers, that the power consumption and resource utilization can be significantly reduced while maintaining accuracy on the Cityscapes dataset.

Topics & Concepts

Field-programmable gate arrayComputer scienceLatency (audio)SegmentationConvolutional neural networkQuantization (signal processing)Software deploymentArtificial intelligencePower consumptionEmbedded systemReal-time computingComputer visionPower (physics)PhysicsOperating systemTelecommunicationsQuantum mechanicsAdvanced Neural Network ApplicationsAdversarial Robustness in Machine LearningCCD and CMOS Imaging Sensors