Convergence property of Nesterov‐accelerated adaptive moment estimation with safety helmet detection and classification in smart industry application

dc.contributor.authorWachirapong Jirakitpuwapat
dc.contributor.authorPremnath Dubey
dc.contributor.authorNarachata Prasertsuk
dc.contributor.authorChaowarit Phanthong
dc.contributor.authorChatchai Tritham
dc.contributor.authorChattabhorn Tritham
dc.contributor.authorSomprattana Chandharakool
dc.contributor.authorChanvit Tharathep
dc.contributor.authorPichitpong Soontornpipit
dc.date.accessioned2026-05-08T19:16:51Z
dc.date.issued2024-5-20
dc.description.abstractWe propose a technique for first‐order gradient‐based optimization of stochastic objective functions called Nesterov‐accelerated adaptive moment assessment, which makes use of dynamic evaluations of lower‐order moments. The adaptive moment assessment and the Nesterov acceleration gradient are combined. Consequently, it has perks, and this technique is convenient to use, numerically economical, memory‐light, and very well‐suited for challenges with massive amounts of information and characteristics. Additionally, we investigate the algorithm's convergence characteristics and propose a conservative constraint on the convergence rate. Finally, we employ this technique for the detection and classification of safety helmets.
dc.identifier.doi10.1002/mma.10174
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/15705
dc.publisherMathematical Methods in the Applied Sciences
dc.subjectTarget Tracking and Data Fusion in Sensor Networks
dc.subjectFault Detection and Control Systems
dc.subjectAnomaly Detection Techniques and Applications
dc.titleConvergence property of Nesterov‐accelerated adaptive moment estimation with safety helmet detection and classification in smart industry application
dc.typeArticle

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