Saved in:
Bibliographic Details
Main Authors: Schoonbeek, Tim J., Hung, Shao-Hsuan, Lehman, Dan, Onvlee, Hans, Kustra, Jacek, de With, Peter H. N., van der Sommen, Fons
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.12385
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917011991298048
author Schoonbeek, Tim J.
Hung, Shao-Hsuan
Lehman, Dan
Onvlee, Hans
Kustra, Jacek
de With, Peter H. N.
van der Sommen, Fons
author_facet Schoonbeek, Tim J.
Hung, Shao-Hsuan
Lehman, Dan
Onvlee, Hans
Kustra, Jacek
de With, Peter H. N.
van der Sommen, Fons
contents Procedure step recognition (PSR) aims to identify all correctly completed steps and their sequential order in videos of procedural tasks. The existing state-of-the-art models rely solely on detecting assembly object states in individual video frames. By neglecting temporal features, model robustness and accuracy are limited, especially when objects are partially occluded. To overcome these limitations, we propose Spatio-Temporal Occlusion-Resilient Modeling for Procedure Step Recognition (STORM-PSR), a dual-stream framework for PSR that leverages both spatial and temporal features. The assembly state detection stream operates effectively with unobstructed views of the object, while the spatio-temporal stream captures both spatial and temporal features to recognize step completions even under partial occlusion. This stream includes a spatial encoder, pre-trained using a novel weakly supervised approach to capture meaningful spatial representations, and a transformer-based temporal encoder that learns how these spatial features relate over time. STORM-PSR is evaluated on the MECCANO and IndustReal datasets, reducing the average delay between actual and predicted assembly step completions by 11.2% and 26.1%, respectively, compared to prior methods. We demonstrate that this reduction in delay is driven by the spatio-temporal stream, which does not rely on unobstructed views of the object to infer completed steps. The code for STORM-PSR, along with the newly annotated MECCANO labels, is made publicly available at https://timschoonbeek.github.io/stormpsr .
format Preprint
id arxiv_https___arxiv_org_abs_2510_12385
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Learning to Recognize Correctly Completed Procedure Steps in Egocentric Assembly Videos through Spatio-Temporal Modeling
Schoonbeek, Tim J.
Hung, Shao-Hsuan
Lehman, Dan
Onvlee, Hans
Kustra, Jacek
de With, Peter H. N.
van der Sommen, Fons
Computer Vision and Pattern Recognition
Procedure step recognition (PSR) aims to identify all correctly completed steps and their sequential order in videos of procedural tasks. The existing state-of-the-art models rely solely on detecting assembly object states in individual video frames. By neglecting temporal features, model robustness and accuracy are limited, especially when objects are partially occluded. To overcome these limitations, we propose Spatio-Temporal Occlusion-Resilient Modeling for Procedure Step Recognition (STORM-PSR), a dual-stream framework for PSR that leverages both spatial and temporal features. The assembly state detection stream operates effectively with unobstructed views of the object, while the spatio-temporal stream captures both spatial and temporal features to recognize step completions even under partial occlusion. This stream includes a spatial encoder, pre-trained using a novel weakly supervised approach to capture meaningful spatial representations, and a transformer-based temporal encoder that learns how these spatial features relate over time. STORM-PSR is evaluated on the MECCANO and IndustReal datasets, reducing the average delay between actual and predicted assembly step completions by 11.2% and 26.1%, respectively, compared to prior methods. We demonstrate that this reduction in delay is driven by the spatio-temporal stream, which does not rely on unobstructed views of the object to infer completed steps. The code for STORM-PSR, along with the newly annotated MECCANO labels, is made publicly available at https://timschoonbeek.github.io/stormpsr .
title Learning to Recognize Correctly Completed Procedure Steps in Egocentric Assembly Videos through Spatio-Temporal Modeling
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2510.12385