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Bibliographic Details
Main Authors: Platt, Nolan, Nizamani, Sehrish, Tural, Alp, Tural, Elif, Nizamani, Saad, Katz, Andrew, Lee, Yoonje, Basit, Nada
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.03401
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author Platt, Nolan
Nizamani, Sehrish
Tural, Alp
Tural, Elif
Nizamani, Saad
Katz, Andrew
Lee, Yoonje
Basit, Nada
author_facet Platt, Nolan
Nizamani, Sehrish
Tural, Alp
Tural, Elif
Nizamani, Saad
Katz, Andrew
Lee, Yoonje
Basit, Nada
contents Understanding student engagement usually requires time-consuming manual observation or invasive recording that raises privacy concerns. We present a privacy-preserving pipeline that analyzes classroom videos to extract insights about student attention, without storing any identifiable footage. Our system runs on a single GPU, using OpenPose for skeletal extraction and Gaze-LLE for visual attention estimation. Original video frames are deleted immediately after pose extraction, thus only geometric coordinates (stored as JSON) are retained, ensuring compliance with FERPA. The extracted pose and gaze data is processed by QwQ-32B-Reasoning, which performs zero-shot analysis of student behavior across lecture segments. Instructors access results through a web dashboard featuring attention heatmaps and behavioral summaries. Our preliminary findings suggest that LLMs may show promise for multimodal behavior understanding, although they still struggle with spatial reasoning about classroom layouts. We discuss these limitations and outline directions for improving LLM spatial comprehension in educational analytics contexts.
format Preprint
id arxiv_https___arxiv_org_abs_2604_03401
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Can LLMs Reason About Attention? Towards Zero-Shot Analysis of Multimodal Classroom Behavior
Platt, Nolan
Nizamani, Sehrish
Tural, Alp
Tural, Elif
Nizamani, Saad
Katz, Andrew
Lee, Yoonje
Basit, Nada
Human-Computer Interaction
Artificial Intelligence
Computer Vision and Pattern Recognition
H.5.2; I.2.7
Understanding student engagement usually requires time-consuming manual observation or invasive recording that raises privacy concerns. We present a privacy-preserving pipeline that analyzes classroom videos to extract insights about student attention, without storing any identifiable footage. Our system runs on a single GPU, using OpenPose for skeletal extraction and Gaze-LLE for visual attention estimation. Original video frames are deleted immediately after pose extraction, thus only geometric coordinates (stored as JSON) are retained, ensuring compliance with FERPA. The extracted pose and gaze data is processed by QwQ-32B-Reasoning, which performs zero-shot analysis of student behavior across lecture segments. Instructors access results through a web dashboard featuring attention heatmaps and behavioral summaries. Our preliminary findings suggest that LLMs may show promise for multimodal behavior understanding, although they still struggle with spatial reasoning about classroom layouts. We discuss these limitations and outline directions for improving LLM spatial comprehension in educational analytics contexts.
title Can LLMs Reason About Attention? Towards Zero-Shot Analysis of Multimodal Classroom Behavior
topic Human-Computer Interaction
Artificial Intelligence
Computer Vision and Pattern Recognition
H.5.2; I.2.7
url https://arxiv.org/abs/2604.03401