As an efficient technique for anti-counterfeiting,holographic diffraction labels has been widely applied to various fields.Due to their unique feature,traditional image recognition algorithms are not ideal for the hol...As an efficient technique for anti-counterfeiting,holographic diffraction labels has been widely applied to various fields.Due to their unique feature,traditional image recognition algorithms are not ideal for the holographic diffraction label recognition.Since a tensor preserves the spatiotemporal features of an original sample in the process of feature extraction,in this paper we propose a new holographic diffraction label recognition algorithm that combines two tensor features.The HSV(Hue Saturation Value)tensor and the HOG(Histogram of Oriented Gradient)tensor are used to represent the color information and gradient information of holographic diffraction label,respectively.Meanwhile,the tensor decomposition is performed by high order singular value decomposition,and tensor decomposition matrices are obtained.Taking into consideration of the different recognition capabilities of decomposition matrices,we design a decomposition matrix similarity fusion strategy using a typical correlation analysis algorithm and projection from similarity vectors of different decomposition matrices to the PCA(Principal Component Analysis)sub-space,then,the sub-space performs KNN(K-Nearest Neighbors)classification is performed.The effectiveness of our fusion strategy is verified by experiments.Our double tensor recognition algorithm complements the recognition capability of different tensors to produce better recognition performance for the holographic diffraction label system.展开更多
With powerful expressiveness of multi-instance multi-label learning(MIML)for objects with multiple semantics and its great flexibility for complex object structures,MIML has been widely applied to various applications...With powerful expressiveness of multi-instance multi-label learning(MIML)for objects with multiple semantics and its great flexibility for complex object structures,MIML has been widely applied to various applications.In practical MIML tasks,the naturally skewed label distribution and label interdependence bring up the label imbalance issue and decrease model performance,which is rarely studied.To solve these problems,we propose an imbalanced multi-instance multi-label learning method via tensor product-based semantic fusion(IMIML-TPSF)to deal with label interdependence and label distribution imbalance simultaneously.Specifically,to reduce the effect of label interdependence,it models similarity between the query object and object sets of different label classes for similarity-structural features.To alleviate disturbance caused by the imbalanced label distribution,it establishes the ensemble model for imbalanced distribution features.Subsequently,IMIML-TPSF fuses two types of features by tensor product and generates the new feature vector,which can preserve the original and interactive feature information for each bag.Based on such features with rich semantics,it trains the robust generalized linear classification model and further captures label interdependence.Extensive experimental results on several datasets validate the effectiveness of IMIML-TPSF against state-of-the-art methods.展开更多
基金This work was mainly supported by Public Welfare Technology and Industry Project of Zhejiang Provincial Science Technology Department.(No.LGG18F020013,No.LGG19F020016,LGF21F020006).
文摘As an efficient technique for anti-counterfeiting,holographic diffraction labels has been widely applied to various fields.Due to their unique feature,traditional image recognition algorithms are not ideal for the holographic diffraction label recognition.Since a tensor preserves the spatiotemporal features of an original sample in the process of feature extraction,in this paper we propose a new holographic diffraction label recognition algorithm that combines two tensor features.The HSV(Hue Saturation Value)tensor and the HOG(Histogram of Oriented Gradient)tensor are used to represent the color information and gradient information of holographic diffraction label,respectively.Meanwhile,the tensor decomposition is performed by high order singular value decomposition,and tensor decomposition matrices are obtained.Taking into consideration of the different recognition capabilities of decomposition matrices,we design a decomposition matrix similarity fusion strategy using a typical correlation analysis algorithm and projection from similarity vectors of different decomposition matrices to the PCA(Principal Component Analysis)sub-space,then,the sub-space performs KNN(K-Nearest Neighbors)classification is performed.The effectiveness of our fusion strategy is verified by experiments.Our double tensor recognition algorithm complements the recognition capability of different tensors to produce better recognition performance for the holographic diffraction label system.
基金supported by the National Natural Science Foundation of China(Grant Nos.62376281 and 62036013)the NSF for Huxiang Young Talents Program of Hunan Province(2021RC3070).
文摘With powerful expressiveness of multi-instance multi-label learning(MIML)for objects with multiple semantics and its great flexibility for complex object structures,MIML has been widely applied to various applications.In practical MIML tasks,the naturally skewed label distribution and label interdependence bring up the label imbalance issue and decrease model performance,which is rarely studied.To solve these problems,we propose an imbalanced multi-instance multi-label learning method via tensor product-based semantic fusion(IMIML-TPSF)to deal with label interdependence and label distribution imbalance simultaneously.Specifically,to reduce the effect of label interdependence,it models similarity between the query object and object sets of different label classes for similarity-structural features.To alleviate disturbance caused by the imbalanced label distribution,it establishes the ensemble model for imbalanced distribution features.Subsequently,IMIML-TPSF fuses two types of features by tensor product and generates the new feature vector,which can preserve the original and interactive feature information for each bag.Based on such features with rich semantics,it trains the robust generalized linear classification model and further captures label interdependence.Extensive experimental results on several datasets validate the effectiveness of IMIML-TPSF against state-of-the-art methods.