计算机科学
人工智能
分割
市场细分
深度学习
图像分割
人工神经网络
数据收集
绘图
机器学习
合成数据
模式识别(心理学)
计算机视觉
数据挖掘
计算机图形学(图像)
业务
统计
数学
营销
作者
Deokhwan Park,Joosoon Lee,Junseok Lee,Kyoobin Lee
标识
DOI:10.1109/ur52253.2021.9494704
摘要
In the process of intelligently segmenting foods in images using deep neural networks for diet management, data collection and labeling for network training are very important but labor-intensive tasks. In order to solve the difficulties of data collection and annotations, this paper proposes a food segmentation method applicable to real-world through synthetic data. To perform food segmentation on healthcare robot systems, such as meal assistance robot arm, we generate synthetic data using the open-source 3D graphics software Blender placing multiple objects on meal plate and train Mask R-CNN for instance segmentation. Also, we build a data collection system and verify our segmentation model on real-world food data. As a result, on our real-world dataset, the model trained only synthetic data is available to segment food instances that are not trained with 52.2% mask AP@all, and improve performance by +6.4%p after fine-tuning comparing to the model trained from scratch. In addition, we also confirm the possibility and performance improvement on the public dataset for fair analysis.
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