Semi-Automated Computer Vision based Tracking of Multiple Industrial Entities -- A Framework and Dataset Creation Approach
This contribution presents the TOMIE framework (Tracking Of Multiple Industrial Entities), a framework for the continuous tracking of industrial entities (e.g., pallets, crates, barrels) over a network of, in this example, six RGB cameras. This framework, makes use of multiple sensors, data pipeline...
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Zusammenfassung: | This contribution presents the TOMIE framework (Tracking Of Multiple
Industrial Entities), a framework for the continuous tracking of industrial
entities (e.g., pallets, crates, barrels) over a network of, in this example,
six RGB cameras. This framework, makes use of multiple sensors, data pipelines
and data annotation procedures, and is described in detail in this
contribution. With the vision of a fully automated tracking system for
industrial entities in mind, it enables researchers to efficiently capture high
quality data in an industrial setting. Using this framework, an image dataset,
the TOMIE dataset, is created, which at the same time is used to gauge the
framework's validity. This dataset contains annotation files for 112,860 frames
and 640,936 entity instances that are captured from a set of six cameras that
perceive a large indoor space. This dataset out-scales comparable datasets by a
factor of four and is made up of scenarios, drawn from industrial applications
from the sector of warehousing. Three tracking algorithms, namely ByteTrack,
Bot-Sort and SiamMOT are applied to this dataset, serving as a proof-of-concept
and providing tracking results that are comparable to the state of the art. |
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DOI: | 10.48550/arxiv.2304.00950 |