Development of a platform based on artificial vision with SVM and KNN algorithms for the identification and classification of ceramic tiles
Abstract
In the ceramic tile manufacturing industry, the quality of production achieved depends to a large extent on the quality of the tile, which is very important for its classification and price. Currently, this process is performed by human operators, but many industries aim to improve performance and production through automation of this process. In this work, we present the development of a platform based on an artificial vision that allows the identification of defects in ceramic tiles, so that we can classify them according to their quality. The algorithms chosen to develop the platform are Support Vector Machine (SVM) and K-Nearest Neighbor (KNN). In order to implement these algorithms, the images are preprocessed, the descriptors for defect detection are obtained, then the algorithms are used and the results obtained
Keywords: vision - Support Vector Machine - K-Nearest Neighbor - ceramic tile sorting - image processing - image processing
DOI: 10.54941/ahfe1001460
Cite this paper
More from this volume
- Won’t you see my neighbor? User predictions, mental models, and similarity-based explanations of AI classifiers
- Using Artificial Intelligence to Improve Human Performance: A Predictive Management Strategy
- Robust AI for Accident Diagnosis of Nuclear Power Plants Using Meta-Learning
- Detection of inappropriate images on smartphones based on computer vision techniques
- Econometric Modeling for the Management and Decomposition of Financial Risk
- Artificial vision system to detect the mood of an Alzheimer's patient
- Analysis of citizen's sentiment towards Philippine administration's intervention against COVID-19
- The Effect of Varying Levels of Automation during Initial Triage of Intrusion Detection
- Generating a Multimodal Dataset Using a Feature Extraction Toolkit for Wearable and Machine Learning: A pilot study
- Hepatitis predictive analysis model through deep learning using neural networks based on patient history
- An analysis model for Machine Learning using Support Vector Machine for the prediction of Diabetic Retinopathy
- Supradyadic Trust in Artificial Intelligence


AHFE Open Access