Skripsi
EGCLAMNETL2: MODEL PENGENALAN CITRA DAUN FITOMEDISIN MENGGUNAKAN CONTRAST ENHANCEMENT DAN REGULARIZED DEEP LEARNING BERBASIS ENSEMBLE BOOSTING.
Phytomedical knowledge is knowledge related to the use of plants for treatment that are passed down from generation to generation. The study of phytomedicine is concerned not only with knowledge management but also image processing. To manage this knowledge, it is necessary to implement computer vision technology to process phytomedicine plant image data so that it can be managed easily. This study conducted experiments using four different models, namely MNET, MNETL2, GCLAMNET and EGCLAMNETL2. MNET experiments conducted using existing parameter settings with values include batch size: 32, epoch: 50, optimizer value: Adam, learning rate value = 0.0001 and input shape value: 224x224L2 regularization (0.05) in the MNETL2 model has a significant impact on loss values. The loss value in the MNETL2 model tends to decrease compared to MNET significantly at each epoch. There are three parameters that need to be initialized in the proposed GCLA model: clipLimit, tileGridSize and midGamma. The clipLimit parameter sets the contrast limiting threshold value. The clipLimit parameter is defined with a value of (3.0). The tileGridSize parameter is used for the number of tiles in each row and column of phytomedicine image pixels. The tileGridSize parameter is defined with a value (8.8) while the midGamma parameter is defined with a value (1.0). Several previous experiments were conducted to determine the appropriate parameter coefficients for each model before being used on EGCLAMNETL2. The proposed EGCLAMNETL2 model architecture as a model of phytomedicine plant leaf image recognition uses an ensemble boosting approach. Based on the experimental results, EGCLAMNETL2 got the best test accuracy compared to the previous model, which was 90.72%, MNET got an accuracy of 83.73%, GCLAMNET got an accuracy of 69.39% and MNETL2 got an accuracy of 84.27%.
Inventory Code | Barcode | Call Number | Location | Status |
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2307006492 | T131330 | T1313302023 | Central Library (Referens) | Available |
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