2022
DOI: 10.1088/1742-6596/2406/1/012020
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Corn Leaf Disease Classification Using Local Binary Patterns (LBP) Feature Extraction

Abstract: Corn is a plant that is widely grown in developing countries such as Indonesia. To increase maize yields, researchers are always innovating on the current state of technology for classifying maize plant diseases. Three kinds of diseases attack corn leaves, namely Gray leaf Spot, Blight, and Common Rush. The amount of data that we use is 3500 data consisting of 500 Gray Leaf Spots, 1000 Blights, 1000 Common Rushes, and 1000 healthy leaves. This study aims to develop an artificial intelligence model. The artific… Show more

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Cited by 8 publications
(4 citation statements)
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“…The calculation of accuracy in machine learning is commonly known as the Confusion Matrix. The Confusion Matrix provides detailed information about the comparison of the classification results performed by the system or model with the actual classification results from the data [24,25]. At this stage, there are several common and frequently used performance matrices, namely accuracy, precision, and recall.…”
Section: Confution Matrixmentioning
confidence: 99%
“…The calculation of accuracy in machine learning is commonly known as the Confusion Matrix. The Confusion Matrix provides detailed information about the comparison of the classification results performed by the system or model with the actual classification results from the data [24,25]. At this stage, there are several common and frequently used performance matrices, namely accuracy, precision, and recall.…”
Section: Confution Matrixmentioning
confidence: 99%
“…Accuracy itself is a value that represents the success rate of the model being built, where the higher the accuracy, the model can provide high accuracy. The calculation to find the accuracy value is done by adding up the true positive (TP) and true negative (TN) classes which are then divided by the total amount of data in each class, here is the formula for calculating the accuracy of the model built [22,23]:…”
Section: Figure 5 Confusion Matrixmentioning
confidence: 99%
“…A convolution with a size of height x width x channel feature input map will be divided into several groups whose number depends on the number of channels indicating the depth of the network. Meanwhile, pointwise convolution is the opposite of depthwise convolution where the depth of the network depends on the number of input channels [22].…”
Section: Figure 2 Mobilenet Architecturementioning
confidence: 99%