2022
DOI: 10.14569/ijacsa.2022.0130628
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Synthetic Data Augmentation of Tomato Plant Leaf using Meta Intelligent Generative Adversarial Network: Milgan

Abstract: Agriculture is one of the most famous case studies in deep learning. Most researchers want to detect different diseases at the early stages of cultivation to save the farmer's economy. The deep learning technique needs more data to develop an accurate system. Researchers generated more synthetic data using basic image operations in traditional approaches, but these approaches are more complicated and expensive. In deep learning and computer vision, the system's accuracy is the crucial component for deciding th… Show more

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Cited by 9 publications
(6 citation statements)
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“…The DICE coefficient is the ratio of the overlapped area multiplied by two intersections and the total area covered by the images. The result does illustrate as shown in equation (2), and it is also known as the "F1-score. "…”
Section: Resultsmentioning
confidence: 99%
See 1 more Smart Citation
“…The DICE coefficient is the ratio of the overlapped area multiplied by two intersections and the total area covered by the images. The result does illustrate as shown in equation (2), and it is also known as the "F1-score. "…”
Section: Resultsmentioning
confidence: 99%
“…GANs are typically measured using the inception score, which assesses how varied the generator's results are (as determined by an image classification, often Inception-v3) or Frechet inception distance (FID). GANs have been suggested as a fast and precise way to predict the generation of high-energy jets [2]. A generator and a discriminator are present in GANs.…”
Section: Introductionmentioning
confidence: 99%
“…Data augmentation in the context of CNNs is the process of producing additional training examples by applying various changes to existing pictures in the training dataset (Albanese et al, 2021). Geometric changes such as random rotation, horizontal and vertical flips, random cropping, and transformations such as brightness modifications or color jitter are examples of frequent transformations used for data augmentation in CNNs (Padmanabhuni and Gera, 2022). Adding random cropping can assist the model in learning to distinguish things that are not centered in the image (Genaev et al, 2022).…”
Section: Datasets Usedmentioning
confidence: 99%
“…For the topic of agricultural pests, this can be done in a variety of ways. There are several methods for creating synthetic data for CNNs (Karam et al, 2022), including generative adversarial networks (GANs), deep learning picture synthesis, data augmentation, and data interpolation (Padmanabhuni and Gera, 2022). Conditional GAN was used by (Abbas et al, 2021) to generate synthetic images for tomato pests and to improve the performances.…”
Section: Datasets Usedmentioning
confidence: 99%
“…This is done while the images are getting ready to be run through clear winds. This combines tasks including managing, scaling, and flipping [22][23][24][25][26]. This prevented the neural association from being over fitted to a particular quiet picture.…”
Section: Data Augmentationmentioning
confidence: 99%