Text detection and object recognition from scene images using CNN and YOLOv3
By: Das, Kaushik.
Contributor(s): Baruah, Arun Kumar.
Publisher: Gurugram IOSR - International Organization of Scientific Research 2022Edition: Vol.24(5), Sep-Oct.Description: 38-47p.Subject(s): Computer EngineeringOnline resources: Click here In: IOSR Journal of Computer Engineering (IOSR-JCE)Summary: Object detection and text recognition, which is otherwise called Optical Character Recognition (OCR), is an emerges as an active area of research because of the quick development with many existing applications. With the fast improvement in the Deep Learning (DL),various powerful tools which can able to learn semantic, high- level, deeper features to tackle the problems in the traditional methods. However, these methods are generally deterministic and gives deterministic output. In this paper, a new DL based object detection and text detection methods was introduced with a novel hybrid activation function. The proposed detection model detects the text and object with high precision rate.Item type | Current location | Call number | Status | Date due | Barcode | Item holds |
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Articles Abstract Database | School of Engineering & Technology Archieval Section | Not for loan | 2023-0082 |
Object detection and text recognition, which is otherwise called Optical Character Recognition (OCR), is an
emerges as an active area of research because of the quick development with many existing applications. With
the fast improvement in the Deep Learning (DL),various powerful tools which can able to learn semantic, high-
level, deeper features to tackle the problems in the traditional methods. However, these methods are generally
deterministic and gives deterministic output. In this paper, a new DL based object detection and text detection
methods was introduced with a novel hybrid activation function. The proposed detection model detects the text
and object with high precision rate.
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