Contact Area Detector using Cross View Projection Consistency for COVID-19 Projects
Pan Zhang, Wilfredo Torres Calderon, Bokyung Lee, Alex Tessier, Jacky, Bibliowicz, Liviu Calin, Michael Lee

TL;DR
This paper introduces a simple, geometry-based method to detect contact between objects and surfaces using cross-view projection consistency, aiding COVID-19 transmission studies without complex 3D reconstruction or extensive training.
Contribution
The paper presents a novel contact detection approach using cross-view projection consistency, avoiding complex 3D reconstruction and deep learning, suitable for real-life applications.
Findings
Effective contact detection via cross-view projection analysis.
Application to office occupancy detection for COVID-19 transmission study.
Method achieves accurate contact identification with simple geometric transformations.
Abstract
The ability to determine what parts of objects and surfaces people touch as they go about their daily lives would be useful in understanding how the COVID-19 virus spreads. To determine whether a person has touched an object or surface using visual data, images, or videos, is a hard problem. Computer vision 3D reconstruction approaches project objects and the human body from the 2D image domain to 3D and perform 3D space intersection directly. However, this solution would not meet the accuracy requirement in applications due to projection error. Another standard approach is to train a neural network to infer touch actions from the collected visual data. This strategy would require significant amounts of training data to generalize over scale and viewpoint variations. A different approach to this problem is to identify whether a person has touched a defined object. In this work, we show…
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Taxonomy
TopicsHuman Pose and Action Recognition · Hand Gesture Recognition Systems · Anomaly Detection Techniques and Applications
