arXiv Open Access 2025

Optimizing Multitask Industrial Processes with Predictive Action Guidance

Naval Kishore Mehta Arvind Shyam Sunder Prasad Sumeet Saurav Sanjay Singh
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Abstrak

Monitoring complex assembly processes is critical for maintaining productivity and ensuring compliance with assembly standards. However, variability in human actions and subjective task preferences complicate accurate task anticipation and guidance. To address these challenges, we introduce the Multi-Modal Transformer Fusion and Recurrent Units (MMTFRU) Network for egocentric activity anticipation, utilizing multimodal fusion to improve prediction accuracy. Integrated with the Operator Action Monitoring Unit (OAMU), the system provides proactive operator guidance, preventing deviations in the assembly process. OAMU employs two strategies: (1) Top-5 MMTF-RU predictions, combined with a reference graph and an action dictionary, for next-step recommendations; and (2) Top-1 MMTF-RU predictions, integrated with a reference graph, for detecting sequence deviations and predicting anomaly scores via an entropy-informed confidence mechanism. We also introduce Time-Weighted Sequence Accuracy (TWSA) to evaluate operator efficiency and ensure timely task completion. Our approach is validated on the industrial Meccano dataset and the largescale EPIC-Kitchens-55 dataset, demonstrating its effectiveness in dynamic environments.

Topik & Kata Kunci

Penulis (5)

N

Naval Kishore Mehta

Arvind

S

Shyam Sunder Prasad

S

Sumeet Saurav

S

Sanjay Singh

Format Sitasi

Mehta, N.K., Arvind, Prasad, S.S., Saurav, S., Singh, S. (2025). Optimizing Multitask Industrial Processes with Predictive Action Guidance. https://arxiv.org/abs/2501.05108

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2025
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arXiv
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