Publication in conference proceedings
A learning-based lossless event data compression for computer vision applications
Ahmadreza Sezavar (Sezavar, A.); Catarina Brites (Brites, C.); João Ascenso (Ascenso, J.); Touradj Ebrahimi (Ebrahimi, T.);
Proc. SPIE 13605, Applications of Digital Image Processing XLVIII
Year (definitive publication)
2025
Language
English
Country
United States of America
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Abstract
Event-based computer vision is becoming very popular. With progress in sensing events, the volume of data produced has increased manyfold, and there is a need for compression. This paper introduces a novel deep-learning-based lossless event data compression codec. The idea is to represent the events as a point cloud with spatial dimensions x and y and temporal dimension t as its coordinates. Then, an adaptive octree structure is created to better compact the latter without introducing any loss by coding the occupancy map. The binary representation of the octree structure, which corresponds to a denser representation of the event data, is then entropy-coded with a learning-based model. The latter is based on using a deep neural network to obtain the probability model of a hyperprior-based arithmetic coder. The proposed hyperprior network architecture includes two neural networks following an auto-encoder structure, which allows the capture of the source statistics effectively.
Acknowledgements
This work was funded by Innosuisse Swiss Innovation Agency under Innovation project Eurostars Project E!2610 EVASION in the framework of Eureka Eurostars.
Keywords
Event Cameras,Event Compression,Hyperprior,Learning-based,Octree,Arithmetic Coding
  • Computer and Information Sciences - Natural Sciences
  • Electrical Engineering, Electronic Engineering, Information Engineering - Engineering and Technology