School of Control Science and Engineering, Shandong University, Ji'nan 250061, China.
College of Physics and Electronic Engineering, Dezhou University, Dezhou 253023, China.
Sensors (Basel). 2018 Jul 22;18(7):2386. doi: 10.3390/s18072386.
With rapid calculation speed and relatively high accuracy, the AdaBoost-based detection framework has been successfully applied in some real applications of machine vision-based intelligent systems. The main shortcoming of the AdaBoost-based detection framework is that the off-line trained detector cannot be transfer retrained to adapt to unknown application scenes. In this paper, a new transfer learning structure based on two novel methods of supplemental boosting and cascaded ConvNet is proposed to address this shortcoming. The supplemental boosting method is proposed to supplementally retrain an AdaBoost-based detector for the purpose of transferring a detector to adapt to unknown application scenes. The cascaded ConvNet is designed and attached to the end of the AdaBoost-based detector for improving the detection rate and collecting supplemental training samples. With the added supplemental training samples provided by the cascaded ConvNet, the AdaBoost-based detector can be retrained with the supplemental boosting method. The detector combined with the retrained boosted detector and cascaded ConvNet detector can achieve high accuracy and a short detection time. As a representative object detection problem in intelligent transportation systems, the traffic sign detection problem is chosen to show our method. Through experiments with the public datasets from different countries, we show that the proposed framework can quickly detect objects in unknown application scenes.
基于快速的计算速度和相对较高的精度,基于 AdaBoost 的检测框架已成功应用于基于机器视觉的智能系统的一些实际应用中。基于 AdaBoost 的检测框架的主要缺点是离线训练的检测器不能转移再训练以适应未知的应用场景。在本文中,提出了一种新的基于两种新的补充增强和级联卷积神经网络的迁移学习结构,以解决这个缺点。补充增强方法是为了补充再训练基于 AdaBoost 的检测器,以将检测器转移到适应未知的应用场景。设计了级联卷积神经网络,并将其附加到基于 AdaBoost 的检测器的末端,以提高检测率和收集补充训练样本。通过级联卷积神经网络提供的补充训练样本,基于 AdaBoost 的检测器可以使用补充增强方法进行再训练。结合经过再训练的增强检测器和级联卷积神经网络检测器的探测器可以实现高精度和短的检测时间。作为智能交通系统中代表性的目标检测问题,选择交通标志检测问题来展示我们的方法。通过在来自不同国家的公共数据集上的实验,我们表明所提出的框架可以快速检测未知应用场景中的对象。