DeepScanner: a Robotic System for Automated 2D Object Dataset Collection with Annotations
Valery Ilin, Ivan Kalinov, Pavel Karpyshev, Dzmitry Tsetserukou
- Year
- 2021
- Access
- Open access
Abstract
In the proposed study, we describe the possibility of automated dataset collection using an articulated robot. The proposed technology reduces the number of pixel errors on a polygonal dataset and the time spent on manual labeling of 2D objects. The paper describes a novel automatic dataset collection and annotation system, and compares the results of automated and manual dataset labeling. Our approach increases the speed of data labeling 240-fold, and improves the accuracy compared to manual labeling 13-fold. We also present a comparison of metrics for training a neural network on a manually annotated and an automatically collected dataset.
Keywords
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