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May 24, 2017 - Python
lbp-features
Here are 28 public repositories matching this topic...
It, shoes? It's a demo project to use both traditional computer vision methods and deep learning to detect and recognize shoes based on shoes7k dataset
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May 31, 2017 - Python
Detection and tracking malign nevus on Android by using opencv(3.0.0).An app of image processing I used knn for classification and LBP algorithm for detection.
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Mar 26, 2018 - Java
Final course project for image processing in RPI
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Apr 11, 2018 - Python
👨 使用 OpenCV 和 Qt 实现人脸(刷脸)登录
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Jun 18, 2018 - C++
Detect, recognize and verify faces using hybrid features: “deep” features from VGG-net + HoG + LBP. Hybrid Features help increase recognition significantly
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Jul 10, 2018 - HTML
Classifier for MOUSE eyes used in behavioural experiments.
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Mar 10, 2019 - Python
Gender Detection Project
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May 4, 2019 - Jupyter Notebook
Facial Expression Classification and Feature Extraction
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May 21, 2019 - Jupyter Notebook
Color/Texture based Image Retrieval
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Nov 25, 2019 - MATLAB
Where Is (the) Ball /Ball Recognition with OpenCV
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Mar 22, 2020 - C++
A two-class fingerprint spoof detector that uses Local Binary Patterns (LBP) features along with Support Vector Machines (SVM) to distinguish live fingerprints images from spoof samples.
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May 6, 2020 - Python
Malaria Detection Project on Malaria Cells
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Jul 23, 2020 - Jupyter Notebook
Computer Vision project such as Image Preprocessing, Image Feature Extraction, Object Detection
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Oct 19, 2020 - Jupyter Notebook
Texture Segmentation using: Gray-Level Co-occurence Matrix, Leung-Malik (LM) Filter Bank and Schmid (S) Filter Bank and Local Binary Pattern.
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Jan 22, 2021 - Jupyter Notebook
The program uses HOG and LBP features to detect human in images. First, use the HOG feature only to detect humans. Next, combine the HOG feature with the LBP feature to form an augmented feature (HOG-LBP) to detect human. A Two-Layer Perceptron (feedforward neural network) will be used to classify the input feature vector into human or no-human.
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May 11, 2021 - Python
Lab Experiments under Lab component of CSE3018 - Content-based Image and Video Retrieval course at Vellore Institute of Technology, Chennai
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Jun 28, 2021 - MATLAB
Collection of HAAR and LBP cascades designed to recognize various street signs
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Nov 5, 2021
Hand crafted features and Learned Features for classification of faces on Yale32x32 dataset. LBP, HoG, SRC, Eigenfaces, Fischerfaces used with conventional ML algorithms
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Mar 5, 2022 - Jupyter Notebook
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