Image Target Detection and Recognition Method Using Deep Learning

Image target detection and recognition had been widely used in many fields. However, the existing methods had poor robustness; they not only had high error rate of target recognition but also had high dependence on parameters, so they were limited in application. Therefore, this paper proposed an im...

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Main Author: Hongyan Sun
Format: Article
Language:English
Published: Wiley 2022-01-01
Series:Advances in Multimedia
Online Access:http://dx.doi.org/10.1155/2022/4751196
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author Hongyan Sun
author_facet Hongyan Sun
author_sort Hongyan Sun
collection DOAJ
description Image target detection and recognition had been widely used in many fields. However, the existing methods had poor robustness; they not only had high error rate of target recognition but also had high dependence on parameters, so they were limited in application. Therefore, this paper proposed an image target detection and recognition method based on the improved R-CNN model, so as to detect and recognize the dynamic image target in real time. Based on the analysis of the existing theories of deep learning detection and recognition, this paper summarized the composition and working principle of the traditional image target detection and recognition system and compared the basic models of target detection and recognition, such as R-CNN network, Fast-RCNN network, and Faster-RCNN network. In order to improve the accuracy and real-time performance of the model in image target detection and recognition, this paper adopted the target feature matching module in the existing R-CNN network model, so as to obtain the feature map close to the same target through similarity calculation for the features extracted by the model. Therefore, an image target detection and recognition algorithm based on the improved R-CNN network model is proposed. Finally, the experimental results showed that the image target detection and recognition algorithm proposed in this paper can be better applied to image target detection and classification in complex environment and had higher detection efficiency and recognition accuracy than the existing models. The target detection and recognition algorithm proposed in this paper had certain reference value and guiding significance for further application research in related fields.
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spelling doaj-art-6b73da0049564564b1c08fc7934dce932025-08-20T03:33:46ZengWileyAdvances in Multimedia1687-56992022-01-01202210.1155/2022/4751196Image Target Detection and Recognition Method Using Deep LearningHongyan Sun0Information & Educational Technology CenterImage target detection and recognition had been widely used in many fields. However, the existing methods had poor robustness; they not only had high error rate of target recognition but also had high dependence on parameters, so they were limited in application. Therefore, this paper proposed an image target detection and recognition method based on the improved R-CNN model, so as to detect and recognize the dynamic image target in real time. Based on the analysis of the existing theories of deep learning detection and recognition, this paper summarized the composition and working principle of the traditional image target detection and recognition system and compared the basic models of target detection and recognition, such as R-CNN network, Fast-RCNN network, and Faster-RCNN network. In order to improve the accuracy and real-time performance of the model in image target detection and recognition, this paper adopted the target feature matching module in the existing R-CNN network model, so as to obtain the feature map close to the same target through similarity calculation for the features extracted by the model. Therefore, an image target detection and recognition algorithm based on the improved R-CNN network model is proposed. Finally, the experimental results showed that the image target detection and recognition algorithm proposed in this paper can be better applied to image target detection and classification in complex environment and had higher detection efficiency and recognition accuracy than the existing models. The target detection and recognition algorithm proposed in this paper had certain reference value and guiding significance for further application research in related fields.http://dx.doi.org/10.1155/2022/4751196
spellingShingle Hongyan Sun
Image Target Detection and Recognition Method Using Deep Learning
Advances in Multimedia
title Image Target Detection and Recognition Method Using Deep Learning
title_full Image Target Detection and Recognition Method Using Deep Learning
title_fullStr Image Target Detection and Recognition Method Using Deep Learning
title_full_unstemmed Image Target Detection and Recognition Method Using Deep Learning
title_short Image Target Detection and Recognition Method Using Deep Learning
title_sort image target detection and recognition method using deep learning
url http://dx.doi.org/10.1155/2022/4751196
work_keys_str_mv AT hongyansun imagetargetdetectionandrecognitionmethodusingdeeplearning