Deep Learning Model for Detecting Abnormal Corn Kernels
Suwannee Adsavakulchai, Mawin Prommasaeng

TL;DR
This paper presents a deep learning approach using CNNs to accurately detect abnormal corn kernels from images, significantly reducing manual inspection costs.
Contribution
It introduces a CNN-based model trained on a new dataset achieving 99% accuracy in classifying abnormal corn kernels.
Findings
Achieved 99% accuracy in kernel classification
Used CRISP-DM framework for systematic analysis
Demonstrated effectiveness of deep learning in agriculture
Abstract
This research aims to detect the physical characteristics of corn kernels and analyze images using a deep learning model. The data analysis based on the CRISP-DM framework which consists of six steps, business understanding, data understanding, data preparation, modelling, evaluation, and deployment. The business goal reduces the cost of the separation of abnormal corn kernels. The dataset comprises 1,800 images of corn kernels and divided equally between normal and abnormal corn kernels. The dataset was divided into three subsets: 1,000 images for training the deep learning model, 600 images for validation and 200 images for testing. The tools for analysis in this research are Jupyter Lab, Python, TensorFlow Keras, and Convolutional Neural Networks. The results revealed that the deep learning model achieved the accuracy rate of 99% in differentiating between normal and abnormal corn…
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Taxonomy
TopicsSmart Agriculture and AI
