Loading [MathJax]/extensions/MathZoom.js
A Low-Rank CNN Architecture for Real-Time Semantic Segmentation in Visual SLAM Applications | IEEE Journals & Magazine | IEEE Xplore

A Low-Rank CNN Architecture for Real-Time Semantic Segmentation in Visual SLAM Applications


Abstract:

Real-time semantic segmentation on embedded devices has recently enjoyed significant gain in popularity, due to the increasing interest in smart vehicles and smart robots...Show More

Abstract:

Real-time semantic segmentation on embedded devices has recently enjoyed significant gain in popularity, due to the increasing interest in smart vehicles and smart robots. In particular, with the emergence of autonomous driving, low latency and computation-intensive operations lead to new challenges for vehicles and robots, such as excessive computing power and energy consumption. The aim of this paper is to address semantic segmentation, one of the most critical tasks for the perception of the environment, and its implementation in a low power core, by preserving the required performance of accuracy and low complexity. To reach this goal a low-rank convolutional neural network (CNN) architecture for real-time semantic segmentation is proposed. The main contributions of this paper are: i) a tensor decomposition technique has been applied to the kernel of a generic convolutional layer, ii) three versions of an optimized architecture, that combines UNet and ResNet models, have been derived to explore the trade-off between model complexity and accuracy, iii) the low-rank CNN architectures have been implemented in a Raspberry Pi 4 and NVIDIA Jetson Nano 2 GB embedded platforms, as severe benchmarks to meet the low-power, low-cost requirements, and in the high-cost GPU NVIDIA Tesla P100 PCIe 16 GB to meet the best performance.
Published in: IEEE Open Journal of Circuits and Systems ( Volume: 3)
Page(s): 115 - 133
Date of Publication: 12 May 2022
Electronic ISSN: 2644-1225

Funding Agency:

Citations are not available for this document.

Cites in Papers - |

Cites in Papers - IEEE (3)

Select All
1.
Nambala Ramsai, K. Sridharan, "Deep Networks and Sensor Fusion for Personal Care Robot Tasks—A Review", IEEE Sensors Journal, vol.25, no.5, pp.7933-7953, 2025.
2.
Dewant Katare, Diego Perino, Jari Nurmi, Martijn Warnier, Marijn Janssen, Aaron Yi Ding, "A Survey on Approximate Edge AI for Energy Efficient Autonomous Driving Services", IEEE Communications Surveys & Tutorials, vol.25, no.4, pp.2714-2754, 2023.
3.
Hajira Saleem, Reza Malekian, Hussan Munir, "Neural Network-Based Recent Research Developments in SLAM for Autonomous Ground Vehicles: A Review", IEEE Sensors Journal, vol.23, no.13, pp.13829-13858, 2023.

Cites in Papers - Other Publishers (3)

1.
Laura Falaschetti, Sara Bruschi, Michele Alessandrini, Giorgio Biagetti, Paolo Crippa, Claudio Turchetti, "An U-Net Semantic Segmentation Vision System on a Low-Power Embedded Microcontroller Platform", Procedia Computer Science, vol.225, pp.4473, 2023.
2.
Yang Liu, Fulong Yi, Yuhua Ma, Yongfu Wang, "A real-time semantic segmentation method for end-to-end autonomous driving in low-light environments", Journal of Intelligent & Fuzzy Systems, pp.1, 2023.
3.
Milica Petrovic, Zoran Miljkovic, Aleksandar Jokic, "Efficient Machine Learning of Mobile Robotic Systems Based on Convolutional Neural Networks", Artificial Intelligence for Robotics and Autonomous Systems Applications, vol.1093, pp.1, 2023.

References

References is not available for this document.