Frisbees and Dogs: Domain Adaptation for Object Detection with Limited Labels in Rugby Data

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2024Author:
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Will Connors, Ellen Rushe, Anthony Ventresque, Frisbees and Dogs: Domain Adaptation for Object Detection with Limited Labels in Rugby Data, ECAI 2024, Spain, 2024Abstract:
Object detection often struggles when applied to low-resource,
domain-specific datasets. This challenge is exacerbated when dealing
with sports-related data such as rugby, where fast-paced gameplay
and tackles result in frequent instances of motion blur and occlusion, representing a substantial domain-shift from widely available
pre-trained models. Given the high cost of manual labelling, we seek
to determine whether we can minimise the number examples needed
for fine-tuning by identifying implausible label classifications made
by pre-trained object detection models. We do this using a coarse-
grained labelling approach in the absence of detailed ground truth
bounding boxes, allowing us to determine whether a label is implausible within the context of a rugby pitch. This is done to maximize the
information provided by each example used for fine-tuning with the
goal of minimizing the number of examples needed. Our results show
that using pool-based, single-step uncertainty sampling to select examples from a subset of frames with implausible labels improves the model performance. More specifically, we show that fine-tuning on
frames with the lowest confidence scores first can lead to greater performance after roughly 30 examples.
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Science Foundation Ireland (SFI)
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http://people.tcd.ie/ventresaDescription:
PUBLISHEDSpain
Author: Ventresque, Anthony
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Science Foundation Ireland (SFI)Other Titles:
ECAI 2024Type of material:
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Telecommunications , Artificial Intelligence , Computer Graphics & Vision , Computer Science , Software EngineeringDOI:
https://doi.org/10.3233/FAIA241066Metadata
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