DETECTION OF COVID-19 ON X-RAY IMAGES USING THE CONVOLUTIONAL NEURAL NETWORK (CNN) APPROACH: COMPARISON OF TRANSFER LEARNING MODELS
EM MANUEL LAIA , LILIS SURYANI SITANGGANG, MELDA SINAGA , DANIEL FRANCI SIHOMBING (2022) DETECTION OF COVID-19 ON X-RAY IMAGES USING THE CONVOLUTIONAL NEURAL NETWORK (CNN) APPROACH: COMPARISON OF TRANSFER LEARNING MODELS , SKRIPSI, UNIVERSITAS PRIMA INDONESIA
ABSTRAK
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The Coronavirus (COVID-19) pandemic has resulted in the worldwide death rate continuing to increase significantly, identification using medical imaging such as X-rays and computed tomography plays an important role in helping medical personnel diagnose positive negative COVID-19 patients, several works have proven the learning approach in-depth using a convolutional neural network (CNN) produces good accuracy for COVID detection based on chest X-Ray images, in this study we propose different transfer learning architectures VGG19, MobileNetV2, InceptionResNetV2 and ResNet (ResNet101V2, ResNet152V2 and ResNet50V2) to analyze their performance, testing conducted in the Google Colab work environment as a platform for creating Python-based applications and all datasets are stored on the Google Drive application, the preprocessing stages are carried out before training and testing, the datasets are grouped into the Normal and COVID folders then combined m become a set of data by dividing them into training sets of 352 images, testing 110 images and validating 88 images, then the detection results are labeled with the number 1 means COVID and the number 0 for NORMAL. Based on the test results, the ResNet50V2 model has a better accuracy rate than other models with an accuracy level of about 0.95 (95%) Precision 0.96, Recall 0.973, F1-Score 0.966, and Support of 74, then InceptionResNetV2, VGG19, and MobileNetV2, so that ResNet50V2-based CNNs can be used as initial identification for the classification of a patient infected with COVID or NORMAL. |
JURNAL
| KATEGORI JURNAL | Jurnal Nasional Terakreditasi |
|---|---|
| TAHUN JURNAL | 2022 |
| VOLUME JURNAL | 6 |
| NOMOR JURNAL | 1 |
| NAMA PENERBIT | Jurnal Resti (Rekayasa Sistem dan Teknologi Informasi) |
| NOMOR ISSN/ISBN | 25800760 |
| LAMAN PENERBIT (URL) | http://jurnal.iaii.or.id/index.php/RESTI/index |
| LAMAN ARTIKEL (URL) | http://jurnal.iaii.or.id/index.php/RESTI/article/view/3373 |