Today there is a clear trend towards deploying advanced computer vision (CV) systems in a growing number of application scenarios with strong real-time and power constraints. Brain-inspired algorithms capable of achieving record-breaking results combined with embedded vision systems are the best candidate for the future of CV and video systems due to their flexibility and high accuracy in the area of image understanding. In this paper, we present an optimized convolutional network implementation suitable for real-time scene labeling on embedded platforms. We show that our algorithm can achieve up to 96GOp/s, running on the Nvidia Tegra K1 embedded SoC. We present experimental results, compare them to the state-of-the-art, and demonstrate that for scene labeling our approach achieves a 1.5x improvement in throughput when compared to a modern desktop CPU at a power budget of only 11 W.

Accelerating real-time embedded scene labeling with convolutional networks / Cavigelli, Lukas; Magno, Michele; Benini, Luca. - STAMPA. - 2015-:(2015), pp. 7167293.1-7167293.6. (Intervento presentato al convegno 52nd ACM/EDAC/IEEE Design Automation Conference, DAC 2015 tenutosi a San Francisco , Usa nel 2015) [10.1145/2744769.2744788].

Accelerating real-time embedded scene labeling with convolutional networks

MAGNO, MICHELE;BENINI, LUCA
2015

Abstract

Today there is a clear trend towards deploying advanced computer vision (CV) systems in a growing number of application scenarios with strong real-time and power constraints. Brain-inspired algorithms capable of achieving record-breaking results combined with embedded vision systems are the best candidate for the future of CV and video systems due to their flexibility and high accuracy in the area of image understanding. In this paper, we present an optimized convolutional network implementation suitable for real-time scene labeling on embedded platforms. We show that our algorithm can achieve up to 96GOp/s, running on the Nvidia Tegra K1 embedded SoC. We present experimental results, compare them to the state-of-the-art, and demonstrate that for scene labeling our approach achieves a 1.5x improvement in throughput when compared to a modern desktop CPU at a power budget of only 11 W.
2015
Proceedings - Design Automation Conference
1
6
Accelerating real-time embedded scene labeling with convolutional networks / Cavigelli, Lukas; Magno, Michele; Benini, Luca. - STAMPA. - 2015-:(2015), pp. 7167293.1-7167293.6. (Intervento presentato al convegno 52nd ACM/EDAC/IEEE Design Automation Conference, DAC 2015 tenutosi a San Francisco , Usa nel 2015) [10.1145/2744769.2744788].
Cavigelli, Lukas; Magno, Michele; Benini, Luca
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/545265
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