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• 图像处理与计算机视觉 • 上一篇    下一篇

多阶段优化的小目标聚焦检测

  

  1. 1. 清华大学软件学院,北京 100084;2. 图灵通诺科技有限公司,北京 100020
  • 出版日期:2020-02-29 发布日期:2020-03-11

FocusNet: coarse-to-fine small object detection network

  1. 1. School of Software, Tsinghua University, Beijing 100084, China; 2. YI Tunnel Company, Beijing 100020, China
  • Online:2020-02-29 Published:2020-03-11

摘要: 目标检测是深度学习领域重要的基础问题之一,目前已经有相当多且较为成熟的
研究。无人冰柜是人工智能在零售产业的一个应用场景。其通过冰柜内设置的摄像头捕捉图像,
利用目标检测方法检测出顾客手中抓取的商品,然后进行后续的商品分类等任务的工作。而由
于场景及硬件的限制,无人冰柜中只能使用速度快但精度较低的深度模型,而这些模型往往在
小目标的检测上精度相对更低。针对无人冰柜场景数据的背景单一、目标范围小等特殊性,改
进了主流的目标检测方法,提出了一种基于聚焦的由粗到精的2 阶段检测网络结构FocusNet,
提升了该场景下的小目标检测效果。该方法相比先前的模型在小目标检测上的平均准确率提升
了8.3%,总体检测平均准确率提升了3.5%。

关键词: 目标检测, 小目标检测, 由粗到精, 无人冰柜, 深度学习

Abstract: Much fruitful study has been conducted on object detection which is one of the
fundamental problems in deep learning. Self-service freezer is an important application of artificial
intelligence in the retail industry. Object detection methods are used to detect goods in pictures
captured by cameras inside the freezer, and tasks such as commodity classification follow suit. Due to
the limitation of hardware, currently we only apply fast while less accurate models in practical
application, of which the detection accuracy is much worse, for small objects. In an attempt to explore
the features of data collected in self-service freezers such as single background and small range of
object, a coarse-to-fine two-stage method called FocusNet was proposed to tackle the problem of
object detection under this special condition, which was based on the previous main stream one-stage
detection method. The experimental results show that FocusNet outperforms the previous method by
about 8.3% and 3.5% in small object detection and overall detection, respectively.

Key words: object detection, small object detection, coarse-to-fine, self-service freezer, deep learning