1. 中国地质大学(武汉)机械与电子信息学院,湖北,武汉,430074
2. 北京师范大学惠州附属学校,广东,惠州,516002
3. 中国地质大学(武汉)机械与电子信息学院,湖北,武汉,430074
4. 北京师范大学惠州附属学校,广东,惠州,516002
网络出版:2016-05-25,
纸质出版:2016
移动端阅览
罗大鹏, 罗琛, 魏龙生, 等. 基于在线随机蕨分类器的实时视觉感知系统[J]. 电子学报, 2016,44(5):1139-1148.
LUO Da-peng, LUO Chen, WEI Long-sheng, et al. Real Time Visual Perception System Based on Online Fern Classifier[J]. Acta Electronica Sinica, 2016, 44(5): 1139-1148.
罗大鹏, 罗琛, 魏龙生, 等. 基于在线随机蕨分类器的实时视觉感知系统[J]. 电子学报, 2016,44(5):1139-1148. DOI: 10.3969/j.issn.0372-2112.2016.05.018.
LUO Da-peng, LUO Chen, WEI Long-sheng, et al. Real Time Visual Perception System Based on Online Fern Classifier[J]. Acta Electronica Sinica, 2016, 44(5): 1139-1148. DOI: 10.3969/j.issn.0372-2112.2016.05.018.
本文针对不同成像条件下
目标姿态变化对系统检测性能的影响
提出一种具有自主学习能力的视觉感知系统.该系统能在执行检测任务的同时
通过快速的自主学习提高检测性能
并保持实时目标检测速度.系统包括了目标检测模块及在线学习样本自动获取、标注模块.针对目标检测模块为满足系统自主学习需求
提出随机蕨分类器的在线学习方法
使目标检测模块可持续自我更新
提高检测性能;针对样本自动获取、标注模块则提出最近邻分类器辅助的双层级联标注方法.此外
本文提出自主在线学习框架
整个学习过程不用准备初始训练样本集
通过人工选定一个待检测目标即可进行无需干预的自适应学习
逐渐提高检测性能.实验表明
该方法在多种监控场景中均有较强的自适应能力和较好的目标检测效果.
A novel online learning object detection system is proposed
which can self learning and improve its detection performance wihout human-annotated training data.The system is composed of a object detection module and a sample labeling module.Online fern classifier is used in the object detection module because of its fast online learning speed.Consequentely
our system can learn automatically and detect objects in the real time.Samples
which are used to train the classifier online
are acquired and labeled automatically from a two stages cascade method in the sample labeling module.Instead of training initial classifier from some manual labeled training samples like other online learning detection frameworks
our system can learn automatically after specifying the object to be detected.This can greatly reduce the efforts of labelers.Experimental results on several video datasets are provided to show the adaptive capability and high detection rate of our system.
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