期刊文献+

A Novel Image Retrieval Method with Improved DCNN and Hash

下载PDF
导出
摘要 In large-scale image retrieval,deep features extracted by Convolutional Neural Network(CNN)can effectively express more image information than those extracted by traditional manual methods.However,the deep feature dimensions obtained by Deep Convolutional Neural Network(DCNN)are too high and redundant,which leads to low retrieval efficiency.We propose a novel image retrieval method,which combines deep features selection with improved DCNN and hash transform based on high-dimension features reduction to gain low-dimension deep features and realizes efficient image retrieval.Firstly,the improved network is based on the existing deep model to build a more profound and broader network by adding multiple groups of different branches.Therefore,it is named DFS-Net(Deep Feature Selection Network).The adaptive learning deep features of the Network can effectively alleviate the influence of over-fitting and improve the feature expression of image content.Secondly,the information gain rate method is used to filter the extracted deep features to reduce the feature dimension and ensure the information loss is small.The last step of the method,hash Transform,sparsifies and binarizes this representation to reduce the computation and storage pressure while maintaining the retrieval accuracy.Finally,the scheme is based on the distinguished ResNet50,InceptionV3,and MobileNetV2 models,and studied and evaluated deeply on the CIFAR10 and Caltech256 datasets.The experimental results show that the novel method can train the deep features with stronger recognition ability on limited training samples,and improve the accuracy and efficiency of image retrieval effectively.
出处 《Journal of Information Hiding and Privacy Protection》 2020年第2期77-86,共10页 信息隐藏与隐私保护杂志(英文)
基金 supported by National Natural Foundation of China(Grant No.61772561) the Key Research&Development Plan of Hunan Province(Grant No.2018NK2012) Graduate Education and Teaching Reform Project of Central South University of Forestry and Technology(Grant No.2018JG005) Teaching Reform Project of Central South University of Forestry and Technology(Grant No.20180682).
  • 相关文献

参考文献3

二级参考文献10

  • 1Li N, Tsang I W, Zhou Z H. Efficient optimization of performance mea- sures by classifier adaptation. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2013, 35(6): 1370-1382.
  • 2Pan S J, Yang Q. A survey of transfer learning. IEEE Transactions on Knowledge and Data Engineering, 2010, 22(10): 1345-1359.
  • 3Sugiyama M, Kawanabe M. Machine Learning in Non-Stationary En- vironments: Introduction to Covariate Shift Adaptation. Cambridge, MA: MIT Press, 2012.
  • 4Da Q, Yu Y, Zhou Z H. Learning with augmented class by exploiting unlabeled data. In: Proceedings of the 28th AAAI Conference on Arti- ficial Intelligence. 2014, 1760-1766.
  • 5Mu X, Ting K M, Zhou Z H. Classification under streaming emerg- ing new classes: a solution using completely random trees. CORR abs/1605.09131, 2016.
  • 6Hou C, Zhou Z H. One-pass learning with incremental and decremental features. CORR abs/1605.09082, 2016.
  • 7Dietterich T G. Towards robust artificial intelligence. AAAI Presiden- tial Address at the 30th AAAI Conference on Artificial Intelligence. 2016.
  • 8Zhou Z H, Jiang Y, Chen S F. Extracting symbolic rules from trained neural network ensembles. AI Communications, 2003, 16(1): 3-15.
  • 9Zhou Z H, Jiang Y. NeC4.5: Neural ensemble based C4.5. IEEE Trans- actions on Knowledge and Data Engineering, 2004, 16(6): 770-773.
  • 10Zhou Z H. Ensemble Methods: Foundations and Algorithms. Boca Ra- ton, FL: CRC Press, 2012.

共引文献46

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