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A deep action-oriented video image classification system for text detection and recognition

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Abstract
For the video images with complex actions, achieving accurate text detection and recognition results is very challenging. This paper presents a hybrid model for classification of action-oriented video images which reduces the complexity of the problem to improve text detection and recognition performance. Here, we consider the following five categories of genres, namely concert, cooking, craft, teleshopping and yoga. For classifying action-oriented video images, we explore ResNet50 for learning the general pixel-distribution level information and the VGG16 network is implemented for learning the features of Maximally Stable Extremal Regions and again another VGG16 is used for learning facial components obtained by a multitask cascaded convolutional network. The approach integrates the outputs of the three above-mentioned models using a fully connected neural network for classification of five action-oriented image classes. We demonstrated the efficacy of the proposed method by testing on our dataset and two other standard datasets, namely, Scene Text Dataset dataset which contains 10 classes of scene images with text information, and the Stanford 40 Actions dataset which contains 40 action classes without text information. Our method outperforms the related existing work and enhances the class-specific performance of text detection and recognition, significantly.

Article highlights

The method uses pixel, stable-region and face-component information in a noble way for solving complex classification problems.

The proposed work fuses different deep learning models for successful classification of action-oriented images.

Experiments on our own dataset as well as standard datasets show that the proposed model outperforms related state-of-the-art (SOTA) methods.

Contributor(s)
Publisher
Springer Science and Business Media LLC
Date Issued
2021-10-09
Language
English
Type
Genre
Form
electronic document
Media type
Creator role
Faculty
Identifier
2523-3963
2523-3971
Has this item been published elsewhere?
Volume
3
Volume
11
Chaudhuri, . A., Shivakumara, . P., Chowdhury, . P. N., Pal, . U., Lu, . T., Lopresti, . D., & Hemantha Kumar, . G. (2021). (Vols. 11). https://doi.org/10.1007/s42452-021-04821-z
Chaudhuri, Abhra, Palaiahnakote Shivakumara, Pinaki Nath Chowdhury, Umapada Pal, Tong Lu, Daniel Lopresti, and G. Hemantha Kumar. 2021. https://doi.org/10.1007/s42452-021-04821-z.
Chaudhuri, Abhra, et al. 9 Oct. 2021, https://doi.org/10.1007/s42452-021-04821-z.