2020
DOI: 10.17485/ijst/v13i39.1621
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An Efficient Medical Image Retrieval and Classification using Deep Neural Network

Abstract: Background/Objectives: The main objective of this work is to obtain an efficient brain tumor image retrieval and classification using Deep Neural Network (DNN). Methods/Statistical analysis: The features from the medical images are extracted by using tamura feature extraction, Local Ternary Pattern (LTP) and Histogram of Oriented Gradients (HOG). Subsequently, an Infinite Feature Selection (Inf-FS) technique is incorporated to select optimum features from feature vector, which leads to improve the classificati… Show more

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Cited by 4 publications
(4 citation statements)
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“…Dataset Accuracy (%) VGG16 (1) Computed tomography (CT) 97.6 KNN's With GLCM (2) Chest CT images of COVID 98.9 Sparse Auto Encoder based DNN (8) OASIS 95.34 ICNN (9) Pap smear dataset 98.88 HoG-LTP method with CNN-Classifier (10) CE-MRI 98.8 GIPBT + DKD (11) Medical Image Set 98.4 CNN (18) liver tumors CT images 96.55 CNN-based deep learning techniques -ResNet-18 (21) GPD data set 96.21 DeepSVM (19) NCT-CRC-HE-100 K 98.75 Hybrid models (CNN, VGG16 and VGG19) (16) diabetic retinopathy (DR) 90.6 CNN-sequential model (20) Chest X-ray (1000 images) 98.437 Proposed Hybrid Model CNN-LSTM Medical Image Dataset 99. 4 The performance of ANN, CNN and Hybrid Model for the medical dataset considered in this work shown in Figure 6, the performance of proposed ensemble method provides more accuracy in image classification compared with ANN and CNN, because of more dense layers of CNN and additional layers of LSTM, also accurate feature extraction with GLCM.…”
Section: Resultsmentioning
confidence: 99%
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“…Dataset Accuracy (%) VGG16 (1) Computed tomography (CT) 97.6 KNN's With GLCM (2) Chest CT images of COVID 98.9 Sparse Auto Encoder based DNN (8) OASIS 95.34 ICNN (9) Pap smear dataset 98.88 HoG-LTP method with CNN-Classifier (10) CE-MRI 98.8 GIPBT + DKD (11) Medical Image Set 98.4 CNN (18) liver tumors CT images 96.55 CNN-based deep learning techniques -ResNet-18 (21) GPD data set 96.21 DeepSVM (19) NCT-CRC-HE-100 K 98.75 Hybrid models (CNN, VGG16 and VGG19) (16) diabetic retinopathy (DR) 90.6 CNN-sequential model (20) Chest X-ray (1000 images) 98.437 Proposed Hybrid Model CNN-LSTM Medical Image Dataset 99. 4 The performance of ANN, CNN and Hybrid Model for the medical dataset considered in this work shown in Figure 6, the performance of proposed ensemble method provides more accuracy in image classification compared with ANN and CNN, because of more dense layers of CNN and additional layers of LSTM, also accurate feature extraction with GLCM.…”
Section: Resultsmentioning
confidence: 99%
“…More and more medical images are appearing in experimental diagnosis due to the fast expansion of the medical profession and the ongoing development of medical technology. The study of medical images is easy now to identify these images properly and accurately (8) . Due to variation in the shape and size of the images, the retrieval task becomes more monotonous in the large medical databases (9) .…”
Section: Introductionmentioning
confidence: 99%
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