In this paper, we propose a new convolutional neural network (CNN) architecture to build a multi-label classifier that categorizes line chart images according to their characteristics. The class labels are organized in the form of trend property (increasing or decreasing) and functional property (linear or exponential). In the proposed method, the Canny edge detection technique is applied as a data preprocessing step to increase both the classification accuracy and training speed. In addition, two different multi-label solution approaches are compared: label powerset (LP) and binary relevance (BR) methods. The experimental studies show that the proposed LP-CNN model achieves 93.75% accuracy, while the BR-CNN model reaches 92.97% accuracy on...
In recovering information from the chart image, the first step should be chart type classification. ...
Deep neural networks have shown increasing performance in image classification recent years. However...
Most works related to convolutional neural networks (CNN) use the traditional CNN framework which ex...
In this paper, we propose a new convolutional neural network (CNN) architecture to build a multi-lab...
Charts are often used for the graphical representation of tabular data. Due to their vast expansion ...
Charts are often used for the graphical representation of tabular data. Due to their vast expansion ...
Addressing issues related to multi-label classification is relevant in many fields of applications. ...
Charts are frequently embedded objects in digital documents and are used to convey a clear analysis ...
Images or videos always contain multiple objects or actions. Multi-label recognition has been witnes...
Charts are frequently embedded objects in digital documents and are used to convey a clear analysis ...
In this paper, we propose the Improved Multi-Label Graph Convolutional Network (IML-GCN) as a precis...
In this paper, a novel graph-based approach for multi-label image classification called Multi-Label ...
peer reviewedIn this paper, a novel graph-based approach for multi-label image classification called...
In this paper, we propose non-linear Machine Learning Techniques (MLT) for Multi-label Image Classif...
In this paper, we propose the Improved Multi-Label Graph Convolutional Network (IML-GCN) as a precis...
In recovering information from the chart image, the first step should be chart type classification. ...
Deep neural networks have shown increasing performance in image classification recent years. However...
Most works related to convolutional neural networks (CNN) use the traditional CNN framework which ex...
In this paper, we propose a new convolutional neural network (CNN) architecture to build a multi-lab...
Charts are often used for the graphical representation of tabular data. Due to their vast expansion ...
Charts are often used for the graphical representation of tabular data. Due to their vast expansion ...
Addressing issues related to multi-label classification is relevant in many fields of applications. ...
Charts are frequently embedded objects in digital documents and are used to convey a clear analysis ...
Images or videos always contain multiple objects or actions. Multi-label recognition has been witnes...
Charts are frequently embedded objects in digital documents and are used to convey a clear analysis ...
In this paper, we propose the Improved Multi-Label Graph Convolutional Network (IML-GCN) as a precis...
In this paper, a novel graph-based approach for multi-label image classification called Multi-Label ...
peer reviewedIn this paper, a novel graph-based approach for multi-label image classification called...
In this paper, we propose non-linear Machine Learning Techniques (MLT) for Multi-label Image Classif...
In this paper, we propose the Improved Multi-Label Graph Convolutional Network (IML-GCN) as a precis...
In recovering information from the chart image, the first step should be chart type classification. ...
Deep neural networks have shown increasing performance in image classification recent years. However...
Most works related to convolutional neural networks (CNN) use the traditional CNN framework which ex...