期刊文献+

驾驶人手机通话行为中基于图像特征决策融合的手势识别方法 被引量:6

Hand gesture recognition method in driver’s phone-call behavior based on decision fusion of image features
原文传递
导出
摘要 为鲁棒检测自然环境中驾驶人的通话行为,提出了一种驾驶人手机通话手势的识别方法。运用Adaboost算法检测驾驶人面部区域,在YCgCr色彩空间中分别对面部肤色亮度分量和色度分量进行稀疏网格间隔采样,由此建立了肤色的高斯分布模型;针对驾驶室光照强度的不均匀性,提出了肤色分量的漂移补偿算法,建立了适应光照变化的在线肤色模型,以准确分割左右手部肤色区域;运用HOG算法获取手部肤色区域的2 376维HOG特征向量,运用PCA方法将HOG特征降至400维;同时提取手部肤色区域的PZMs特征,并采用Relief算法筛选出权重最大的8个PZMs特征向量,建立了融合PCA-HOG特征和Relief-PZMs特征的通话手势支持向量机分类决策。试验结果表明:基于PCA-HOG特征的手势识别率为93.1%,对光照变化的鲁棒性较好,但易受到手部与头部转动的干扰;基于Relief-PZMs特征的手势识别率为91.9%,对于头部与手部姿态的耐受度较好,但光照鲁棒性较差;基于PCA-HOG和Relief-PZMs多元特征融合方法的手势识别率达到94.5%,对光照波动、手部与头部转动等干扰条件具有较好的适应性。 In order to detect drivers'phone-call behavior robustly in natural environment,a hand gesture recognition method was proposed.The Adaboost algorithm was used to detect driver's face region.In YCgCrcolor space,the brightness component and chroma component of facial skin were sampled by sparse grid,respectively,and a Gaussian distribution model of skin color was built.Considering the inhomogeneity of cab illumination,a skin color component drift compensation algorithm was proposed,and an online skin color model was established to adapt the changes of illumination,so that the skin color regions of right and left hands can be accurately segmented.The 2 376dimensions HOG feature vector of hand skin region was extracted by HOG algorithm,and then PCA method was used to reduce HOG feature vector to 400dimensions. Meanwhile,the PZMs features of hand skin region were extracted and 8PZMs feature vectors with the largest weights were screened out by Relief algorithm.A support vector machine classifier decision for phone-call hand gesture was established based on the PCA-HOG and Relief- PZMs features.Experimental result shows that the hand gesture recognition rate based on the PCA-HOG features is 93.1%,and it has good robust to illumination changes but is easily disturbed by hand and head rotation.The hand gesture recognition rate based on the Relief-PZMs features is 91.9%,and it has good tolerance to head and hand gestures but has poor illumination robustness.The hand gesture recognition rate of the proposed multi-feature-fusion method combined with the PCA-HOG and Relief-PZMs is up to 94.5%,and it has good adaptability to illumination fluctuate,hand and head rotation,and other interference conditions.2tabs,15figs,31refs.
作者 程文冬 马勇 魏庆媛 CHENG Wen-dong;MA Yong;WEI Qing-yuan(School of Mechatronic Engineering,Xi'an Technological University,Xi'an 710021,Shaanxi,China;School of Automobile,Chang'an University,Xi'an 710064,Shaanxi,China;School of Mechanical Engineering,Harbin Institute of Petroleum,Harbin 150028,Heilongjiang,China)
出处 《交通运输工程学报》 EI CSCD 北大核心 2019年第4期171-181,共11页 Journal of Traffic and Transportation Engineering
基金 国家自然科学基金项目(51775053) 陕西省自然科学基础研究计划(2018JM5158)
关键词 信息处理 通话手势识别 机器视觉 肤色模型 HOG特征 PZMs特征 决策融合 information processing hand gesture recognition of phone-call machine vision skincolor model HOG feature PZMs feature decision fusion
  • 相关文献

参考文献8

二级参考文献72

  • 1廖军洪,刘仍奎.基于GIS的铁路行车事故救援系统研究[J].中国安全科学学报,2003,13(11):5-8. 被引量:7
  • 2李素梅,张延,常胜江,申金媛,李宜宾,王立.基于SVM实现人眼注视与否的探知[J].光电子.激光,2004,15(10):1229-1233. 被引量:10
  • 3张恒,吴晓娟,董文会.基于模糊融合的驾驶员眼睛状态识别[J].计算机应用,2007,27(2):349-350. 被引量:1
  • 4张毓晋.图像分析[M].北京:清华大学出版社,2005. 被引量:2
  • 5AKMELIAWATI R, JIMOH M, SALAMI E, et al. Vision- based hand posture detection and recognition for sign language --a study[C]//Proceedings of the 4th International Confer- ence on Macaronis (ICOM). New York: IEEE, 2011: 1-6. 被引量:1
  • 6ONG E, BOWDEN R. A boosted classifier tree for hand shape detection[C]//Proceedings of International Conference on Au- tomatic Face and Gesture Recognition. New York: IEEE, 2004:889-894. 被引量:1
  • 7AMIN M A, YAN H. Sign language finger alphabet recogni- tion from Gabor-PCA representation of hand gestures[C] // Proceedings of the Sixth International Conference on Machine Learning and Cybernetics. New York: IEEE, 2007: 2218- 2223. 被引量:1
  • 8NIEBLES J, WANG H, LI F F. Unsupervised learning of hu- man action categories using spatial temporal words [J]. Inter- national Journal of Computer Vision, 2008, 79(3) .. 299-318. 被引量:1
  • 9DARDAS N H, PETRIU E M. Hand gesture detection and recognition using principal component analysis [C]// Proceed- ings of International Conference on Computational Intelligence for Measurement Systems and Applications (CIMSA). Otta- wa: IEEE, 2011: 1-6. 被引量:1
  • 10DONOHO D L. Compressed sensing[J].IEEE Transactions on Information Theory, 2006, 52(4) : 1289-1306. 被引量:1

共引文献62

同被引文献61

引证文献6

二级引证文献18

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部