Personal implementation of the paper "A two-stage ensemble method for the detection of class-label noise"
-
Updated
Dec 7, 2018 - Python
Personal implementation of the paper "A two-stage ensemble method for the detection of class-label noise"
Synthesis Images noise detection metrics developed including all approaches using SVD or others compression methods
Allows your to monitor sound levels in an environment using an IOT network [work in progress]
Volume and Patience monitor for parents using Adafruit Circuit Board Express
Smart safety helmet for large scale construction sites
Environment noise grading and using it to manage deep learning models for higher accuracy classification/detection.
FonGuard turns your phone into a sentinel watching out for intruders and reporting any suspect motion, noise or vibration in real time.
Code basis for the paper "Real-time Noise Source Estimation of a Camera System from an Image and Metadata" (Advanced Intelligent Systems, 2024)
Calcium signal processing algorithm for automated analysis of intracellular calcium responses
An implementation of OPTICS Algorithm
Decibel reader and analyzer
Project which contains all result files from all repositories
Assignment: This assignment will be image/video denoising. Some images are provided as input. Part 1: Corrupt the images by randomly choosing some pixels and replacing the pixel values with random/junk values [3 marks] Part 2: Display and save the noisy images [1 marks] Part 3: Read in the saved noisy images. Identify the noisy pixels by compari…
Android app that allows you to detect a loud noise with your phone!
Classification of noise types applied to an image using convolutional neural networks
micko, the unapologetic microphone volume monitor.
[Personal Research Side Project] - Project: Deployed app which detected various types of noise using continuous wavelet transform
Noise Interpolation for Colored Images
Implementation of DBSCAN clustering algorithm in C (standard C89/C90, K&R code style)
Add a description, image, and links to the noise-detection topic page so that developers can more easily learn about it.
To associate your repository with the noise-detection topic, visit your repo's landing page and select "manage topics."