Affiliation:
1. DSPM-IIITNR, Raipur, India
Abstract
Chart images exhibit significant variabilities that make each image different from others even though they belong to the same class or categories. Classification of charts is a major challenge because each chart class has variations in features, structure, and noises. However, due to the lack of affiliation between the dissimilar features and the structure of the chart, it is a challenging task to model these variations for automatic chart recognition. In this article, we present a novel dissimilarity-based learning model for similar structured but diverse chart classification. Our approach jointly learns the features of both dissimilar and similar regions. The model is trained by an improved loss function, which is fused by a structural variation-aware dissimilarity index and incorporated with regularization parameters, making the model more prone toward dissimilar regions. The dissimilarity index enhances the discriminative power of the learned features not only from dissimilar regions but also from similar regions. Extensive comparative evaluations demonstrate that our approach significantly outperforms other benchmark methods, including both traditional and deep learning models, over publicly available datasets.
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Networks and Communications,Hardware and Architecture
Reference58 articles.
1. Boosting for learning from multiclass data sets via a regularized loss function
2. Jihen Amara Pawandeep Kaur Michael Owonibi and Bassem Bouaziz. 2017. Convolutional neural network based chart image classification. In Proceedings of the 25th International Conference in Central Europe on Computer Graphics Visualization and Computer Vision .
Cited by
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