Medicinal Plants Detection
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Updated
Aug 25, 2024 - Jupyter Notebook
Medicinal Plants Detection
Image analysis and classification techniques using Grey Level Co-occurrence Matrices (GLCM).
Código empleado para la clasificación de imágenes de resonancia magnética para la detección de la enfermedad de Alzheimer a partir de la técnica GLCM y los algoritmos de clasificación: KNN, random forest, árbol de decisión y regresión logística.
Fast, Texture Feature Maps from N-Dimensional Images
This project is used to compare two model that is being made using Support Vector Machine (SVM) algoritm that is being trained by using one dataset, but the model is trained using a dataset that is being preprocessed using some preprocessing techniques, while the other one is just the plain image dataset.
This repository contains a pipeline for creating annotations for images and generating a dataset from these annotations. It also includes unit tests for the models used within the pipeline. The pipeline incorporates several machine learning models that are trained and tested on a dataset.
Repository with Machine Vision Projects
This project implements a real-time face emotion recognition system using Gray-Level Co-Occurrence Matrix (GLCM) for feature extraction and an Artificial Neural Network (ANN) for classification. The system can identify various emotional states from facial expressions in real-time.
Satelite image classification in South Zone, Rio de Janeiro
Recognition of different material using its texture feature out of the video file
Modified CoALTP Descriptor: An enhanced feature extraction method for image analysis, improving accuracy and robustness.
This is an image processing mini project that provides base required values of particular image to user by calculating from converted grayscale image.
Repo for generating a SVM model using a GLCM, Haralick features
Our system works on the detection of cataracts and type of classification on the basis of severity namely; mild, normal, and severe, in an attempt to reduce errors of manual detection of cataracts in the early ages using Machine Learning and Transfer Learning
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