Integrating CNN along with FAST descriptor for accurate retrieval of medical images with reduced error probability
The size of medical image repositories is continuously growing due to the widespread use of digital imaging data in hospitals. This overlays the way for more medical records to be stored in the future. An effective image retrieval system must be designed to make retrieving medical images from datase...
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description | The size of medical image repositories is continuously growing due to the widespread use of digital imaging data in hospitals. This overlays the way for more medical records to be stored in the future. An effective image retrieval system must be designed to make retrieving medical images from datasets as simple as possible. Using diverse feature extraction procedures, a number of researchers have created several picture retrieval frameworks. However, a semantic gap caused by poor extraction of low and high-level features is a fundamental problem in traditional image retrieval frameworks. As a result, during the construction of a retrieval framework, an effective feature extraction technique must be included for proper extraction of both level characteristics. The present research aims at designing modified Convolutional Neural Network(CNN) for the effective retrieval of medical images. The proposed process is performed using two models such as training and testing model. In the training phase, the features are learned using Features from Accelerated Segment Test with CNN (FAST-CNN) and stored in the database. Subsequently, in the testing process, a query image is retrieved from the dataset based on the feature matching process using Minkowski distance. The performance of the proposed retrieval framework is tested on three medical datasets using some of the metrics such as accuracy, sensitivity, precision, and F1 score. Using the proposed retrieval framework, accurate retrieval with a lesser error rate is achieved and the accuracy reached using this proposed retrieval framework is around 94%. |
doi_str_mv | 10.1007/s11042-022-13991-w |
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This overlays the way for more medical records to be stored in the future. An effective image retrieval system must be designed to make retrieving medical images from datasets as simple as possible. Using diverse feature extraction procedures, a number of researchers have created several picture retrieval frameworks. However, a semantic gap caused by poor extraction of low and high-level features is a fundamental problem in traditional image retrieval frameworks. As a result, during the construction of a retrieval framework, an effective feature extraction technique must be included for proper extraction of both level characteristics. The present research aims at designing modified Convolutional Neural Network(CNN) for the effective retrieval of medical images. The proposed process is performed using two models such as training and testing model. In the training phase, the features are learned using Features from Accelerated Segment Test with CNN (FAST-CNN) and stored in the database. Subsequently, in the testing process, a query image is retrieved from the dataset based on the feature matching process using Minkowski distance. The performance of the proposed retrieval framework is tested on three medical datasets using some of the metrics such as accuracy, sensitivity, precision, and F1 score. 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This overlays the way for more medical records to be stored in the future. An effective image retrieval system must be designed to make retrieving medical images from datasets as simple as possible. Using diverse feature extraction procedures, a number of researchers have created several picture retrieval frameworks. However, a semantic gap caused by poor extraction of low and high-level features is a fundamental problem in traditional image retrieval frameworks. As a result, during the construction of a retrieval framework, an effective feature extraction technique must be included for proper extraction of both level characteristics. The present research aims at designing modified Convolutional Neural Network(CNN) for the effective retrieval of medical images. The proposed process is performed using two models such as training and testing model. In the training phase, the features are learned using Features from Accelerated Segment Test with CNN (FAST-CNN) and stored in the database. Subsequently, in the testing process, a query image is retrieved from the dataset based on the feature matching process using Minkowski distance. The performance of the proposed retrieval framework is tested on three medical datasets using some of the metrics such as accuracy, sensitivity, precision, and F1 score. Using the proposed retrieval framework, accurate retrieval with a lesser error rate is achieved and the accuracy reached using this proposed retrieval framework is around 94%.</abstract><cop>New York</cop><pub>Springer US</pub><doi>10.1007/s11042-022-13991-w</doi><tpages>28</tpages></addata></record> |
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subjects | Accelerated tests Accuracy Artificial neural networks Computer Communication Networks Computer Science Data Structures and Information Theory Datasets Digital imaging Error reduction Extraction procedures Feature extraction Image retrieval Medical imaging Model testing Multimedia Information Systems Special Purpose and Application-Based Systems Training |
title | Integrating CNN along with FAST descriptor for accurate retrieval of medical images with reduced error probability |
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