Optimal Classification Model for Text Detection and Recognition in Video Frames

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING International Journal of Image and Graphics Pub Date : 2023-08-04 DOI:10.1142/s0219467825500147
Laxmikant Eshwarappa, G. G. Rajput
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Abstract

Currently, the identification of text from video frames and normal scene images has got amplified awareness amongst analysts owing to its diverse challenges and complexities. Owing to a lower resolution, composite backdrop, blurring effect, color, diverse fonts, alternate textual placement among panels of photos and videos, etc., text identification is becoming complicated. This paper suggests a novel method for identifying texts from video with five stages. Initially, “video-to-frame conversion”, is done during pre-processing. Further, text region verification is performed and keyframes are recognized using CNN. Then, improved candidate text block extraction is carried out using MSER. Subsequently, “DCT features, improved distance map features, and constant gradient-based features” are extracted. These characteristics subsequently provided “Long Short-Term Memory (LSTM)” for detection. Finally, OCR is done to recognize the texts in the image. Particularly, the Self-Improved Bald Eagle Search (SI-BESO) algorithm is used to adjust the LSTM weights. Finally, the superiority of the SI-BESO-based technique over many other techniques is demonstrated.
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视频帧文本检测与识别的最优分类模型
目前,从视频帧和正常场景图像中识别文本由于其多样的挑战和复杂性而在分析师中得到了广泛的关注。由于较低的分辨率、复合背景、模糊效果、颜色、不同的字体、照片和视频面板之间的交替文本位置等,文本识别变得越来越复杂。本文提出了一种从视频中识别文本的新方法,该方法分为五个阶段。最初,“视频到帧的转换”是在预处理过程中完成的。此外,使用CNN执行文本区域验证并识别关键帧。然后,使用MSER进行改进的候选文本块提取。随后,提取了“DCT特征、改进的距离图特征和基于恒定梯度的特征”。这些特征随后为检测提供了“长短期记忆(LSTM)”。最后,对图像中的文本进行OCR识别。特别地,使用自改进的秃鹰搜索(SI-BESO)算法来调整LSTM权重。最后,证明了基于SI BESO的技术相对于许多其他技术的优越性。
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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