An Efficient Object Detection Model Using Convolution Neural Networks

Ulagamuthalvi., J.B. Janet Felicita, D. Abinaya
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引用次数: 10

Abstract

Image processing and computer vision have gained an enormous advance in the field of machine learning techniques. Some of the major research areas within machine learning are Object detection and Scene Recognition. Though there are numerous existing works related to the specified fields object detection still encounters numerous challenges when it comes to implementing in the real-time scenario. The problem occurs in the detection due to various objects present in the background. Object detection mechanism detects a specified object when a particular scene is given. Classifiers like SVM and Neural Networks are used to train the classifier in such a way they are able to detect an object when a new image is given. In this paper, we have proposed a model which detects texts from an image. Bounding boxes are used to detect the texts and localize it. The neural network is used to train the model where numerous images having texts are given as the training set. The performance evaluation is done on the model and it is observed that it detects the texts when a new image is given. Object detection is a fundamental problem in computer vision, which aims to detect general objects in images.
基于卷积神经网络的高效目标检测模型
图像处理和计算机视觉在机器学习技术领域取得了巨大的进步。机器学习的一些主要研究领域是物体检测和场景识别。尽管已有许多与指定领域相关的工作,但在实时场景中实现目标检测仍然面临许多挑战。由于背景中存在各种物体,因此在检测中会出现问题。对象检测机制在给定特定场景时检测指定对象。像SVM和神经网络这样的分类器被用来训练分类器,使它们能够在给定新图像时检测到目标。在本文中,我们提出了一种从图像中检测文本的模型。边界框用于检测文本并对其进行定位。利用神经网络对模型进行训练,其中以大量具有文本的图像作为训练集。对该模型进行了性能评估,观察到当给定新图像时,该模型能够检测文本。目标检测是计算机视觉中的一个基本问题,其目的是检测图像中的一般目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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