首页 /研究 /Active Image Sampling on Canonical Views for Novel Object Detection
PERCEPTION

Active Image Sampling on Canonical Views for Novel Object Detection

Qianli Xu, Fen Fang, Nicolas Gauthier, Liyuan Li, Joo‐Hwee Lim

发表年份
2020
引用次数
7

摘要

To alleviate the costly data annotation problem in deep learning-based object detection, we leverage the canonical view model for active sample selection to improve the effectiveness of learning. Inspired by the view-approximation model, we hypothesize that visual features learned from canonical views denote better representations of objects, thus boosting the effectiveness of object learning. We validate the hypothesis empirically in the context of robot learning for novel object detection. Based on this, we propose a novel on-line viewpoint exploration (OLIVE) method that (1) defines goodness-of-view by combining informativeness of visual features and consistency of model-based object detection, and (2) systematically explores and selects viewpoints to boost learning efficiency. Furthermore, we train a legacy Faster R-CNN model with a data augmentation method while leveraging data samples generated by the OLIVE pipeline. We test our method on the T-LESS dataset and show that the proposed method outperforms competitive benchmarking methods, especially when the samples are few.

关键词

Computer scienceArtificial intelligenceObject detectionLeverage (statistics)Boosting (machine learning)Machine learningBenchmarkingConsistency (knowledge bases)Pattern recognition (psychology)

相关论文

查看 PERCEPTION 分类全部论文