TY - GEN
T1 - Faster Classification of Time-Series Input Streams
AU - Agrawal, Kunal
AU - Baruah, Sanjoy
AU - Guo, Zhishan
AU - Li, Jing
AU - Reghenzani, Federico
AU - Yang, Kecheng
AU - Zhao, Jinhao
N1 - Publisher Copyright:
© Kunal Agrawal, Sanjoy Baruah, Zhishan Guo, Jing Li, Federico Reghenzani, Kecheng Yang, and Jinhao Zhao.
PY - 2025/7/7
Y1 - 2025/7/7
N2 - Deep learning-based classifiers are widely used for perception in autonomous Cyber-Physical Systems (CPS's). However, such classifiers rarely offer guarantees of perfect accuracy while being optimized for efficiency. To support safety-critical perception, ensembles of multiple different classifiers working in concert are typically used. Since CPS's interact with the physical world continuously, it is not unreasonable to expect dependencies among successive inputs in a stream of sensor data. Prior work introduced a classification technique that leverages these inter-input dependencies to reduce the average time to successful classification using classifier ensembles. In this paper, we propose generalizations to this classification technique, both in the improved generation of classifier cascades and the modeling of temporal dependencies. We demonstrate, through theoretical analysis and numerical evaluation, that our approach achieves further reductions in average classification latency compared to the prior methods.
AB - Deep learning-based classifiers are widely used for perception in autonomous Cyber-Physical Systems (CPS's). However, such classifiers rarely offer guarantees of perfect accuracy while being optimized for efficiency. To support safety-critical perception, ensembles of multiple different classifiers working in concert are typically used. Since CPS's interact with the physical world continuously, it is not unreasonable to expect dependencies among successive inputs in a stream of sensor data. Prior work introduced a classification technique that leverages these inter-input dependencies to reduce the average time to successful classification using classifier ensembles. In this paper, we propose generalizations to this classification technique, both in the improved generation of classifier cascades and the modeling of temporal dependencies. We demonstrate, through theoretical analysis and numerical evaluation, that our approach achieves further reductions in average classification latency compared to the prior methods.
KW - Classification
KW - Deep Learning
KW - IDK classifiers
KW - Sensor data streams
UR - https://www.scopus.com/pages/publications/105010597616
UR - https://www.scopus.com/pages/publications/105010597616#tab=citedBy
U2 - 10.4230/LIPIcs.ECRTS.2025.13
DO - 10.4230/LIPIcs.ECRTS.2025.13
M3 - Conference contribution
AN - SCOPUS:105010597616
T3 - Leibniz International Proceedings in Informatics, LIPIcs
BT - 37th Euromicro Conference on Real-Time Systems, ECRTS 2025
A2 - Mancuso, Renato
PB - Schloss Dagstuhl- Leibniz-Zentrum fur Informatik GmbH, Dagstuhl Publishing
T2 - 37th Euromicro Conference on Real-Time Systems, ECRTS 2025
Y2 - 8 July 2025 through 11 July 2025
ER -