Summary |
Inspired by the human nature that a child can learn by taking an objectthen observing it, we proposed two novel methods: (1) Object Detection by Interactive Perception (ODIP), where a few-shot object detector gradually learns unseen instances by interacting with a well-developed object grasping system, collecting required visual dataannotations in an automatic manner. (2) an efficienteffective few-shot object detection model with novel attention mechanism called Dual-Awareness Attention (DAnA).
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Industrial Applicability |
The proposed ODIP paradigm can significantly reduce the expensivetime-consuming process of collecting dataannotations for the deployment in industrial scenarios. It will conspicuously facilitate the deployment of advanced deep learning techniques in several fields (e.g., industry, healthcare, home, etc.), where the annotated data are usually limited.
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