Proceedings of the 19th ACM International Conference on Computing Frontiers 2022
DOI: 10.1145/3528416.3530230
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Enabling resource-efficient edge intelligence with compressive sensing-based deep learning

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Cited by 6 publications
(4 citation statements)
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“…Moreover, a type of ML technique inspired by the structure and functioning of the human brain, called NN, also received considerable attention. There were 11 articles, which are [31], [32], [34], [41], [56], [65], [69], [71], [73], [81], [87], found in this study. In the context of business plans and logistics decision processes, five articles address various challenges and research problems in improving production processes and decisionmaking using AI in Industry 4.0.…”
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confidence: 65%
See 1 more Smart Citation
“…Moreover, a type of ML technique inspired by the structure and functioning of the human brain, called NN, also received considerable attention. There were 11 articles, which are [31], [32], [34], [41], [56], [65], [69], [71], [73], [81], [87], found in this study. In the context of business plans and logistics decision processes, five articles address various challenges and research problems in improving production processes and decisionmaking using AI in Industry 4.0.…”
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confidence: 65%
“…The RL class is used to provide a planning model of the mobile base agent of the SwarmItFIX robot with novel Swing and Dock (SaD) locomotion for material handling/transfer applications [54], and also combined with CV to create automated quality inspection in the production system [77]. The NN class is used as a model recommendation in the decision-making process [31], and combined with the compressive sensing (CS) method, enabling resource-efficient edge hardware intelligence [81]. Then, the SSL class is used to provide fault diagnostic and prognostic considering conditionbased maintenance (CM) data along with event-triggered data [47].…”
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confidence: 99%
“…As a result, there is a potential for previously prohibitively demanding continuous sensing and inference to finally be realized in certain domains. Furthermore, a graceful degradation in end-result quality can be supported with the CS-DL pipeline (Machidon and Pejović 2022). Through reduced CS sampling and reduced accuracy DL inference we can, in a controlled manner, trade result quality for resource usage.…”
Section: Towards Deep Learning-supported Compressive Sensingmentioning
confidence: 99%
“…For handling the size mismatch between the size-varying CS measurement vectors and input layer two approaches are explored: one that zero-pads the measurement vectors so they are all of the maximum length, which is also the dimension of the input layer of network; and the other that projects back into the original space dimension the measurements, to get a pseudo-inverse of the measurement matrix, like in the previous work (Lohit et al 2018b). CS rate adaptivity was also addressed in Machidon and Pejović (2022), where a zero padding strategy was also proposed and combined with context awareness to intelligently adapt the sampling rate according to the nature of the signal at the input.…”
Section: Measurement Rate Adaptivitymentioning
confidence: 99%