scumechanics's repositories

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Bearing-Anomaly-Detection-using-Machine-Learning

Showcase how machine learning can help operators monitor equipment conditions through correctly analyzing measurement data collected from many sensors.

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corrosion-monitoring-using-UNET

In order to avoid regulatory violations, downtime, or fatal disasters, industrial assets must be maintained in a timely manner. One of the biggest factors for timely maintenance is corrosion of the assets. Corrosion causes generation of irregular surface that looks bad in appearance and can produce serious problems. To avoid corrosion problems, timely maintenance must be scheduled well in advance. For this, images-based corrosion detection can be a useful tool with respect to real time corrosion tests. In this work, images-based corrosion detection is performed using Deep-learning UNET-8layer architecture. More than 400 images of corrosion data with their binary ground truth or labels are trained to analyze and classify the corroded region in the images. After training, the model is tested, and it is found that the prediction over corroded part of original image data can be done with the model with binary accuracy of 95.28% and validation binary accuracy of 96.87%.

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Deep-Learning-High-Entropy-Alloys

High Entropy Alloys (HEAs) are multi-chemical elements alloys with exceptional physical properties. HEAs have sparked the interest in engineering applications such as energy storage, catalysis and bio/plasmonic imaging. The understanding of the structural of composition of HEAs is paramount for the appropriate tuning of their properties. Scanning Transmission Electron Microscopy (STEM) is typically used to acquire images of various materials at the atomic scale resolution. including HEAs. In this repository it is demonstrated how computer vision analysis based on Deep Learning (DL) could be used to extract structural information from STEM images of HEAs. In particular a Fully Convolutional Neural Network (FCN) is trained to recognize the number of atoms of different chemical species in the atomic columns of HEA (i.e., column heights CHs) through semantic segmentation of simulated and experimental STEM images. As a benchmark case, equiatomic PtNiPdCoFe HEAs are considered. This project represent a first attempt for the identification of chemical species in 3D materials. Thus, in addition to the estimation of the structural properties of HEAs, this work establish an advancement of DL applied to microscopy image which could be useful for a broad area of nano-science applications.

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GPR-Object-Detection

This repository contains code to train object detection models like FRCNN for identifying objects in Ground Penetrating Radar scans. It also contains code to generate fake data using GANs.

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Image_segmentation_with_U-net

Image segmentation using vanilla Unets with batch normalization.

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Rainfall_predictor

Use rainfall data predict landslide occur or not

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similarity_measures

Quantify the difference between two arbitrary curves in space

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ThymeBoost

Forecasting with Gradient Boosted Time Series Decomposition

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android-demo-app

PyTorch android examples of usage in applications

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google-research

Google Research

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GroundingDINO

The official implementation of "Grounding DINO: Marrying DINO with Grounded Pre-Training for Open-Set Object Detection"

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Impeller-stress-prediction

Calculate stress and natural frequency of centrifugal fan's impeller

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LLDE

This is the code repo of our ICIP2023 work that proposes a novel approach to low-light image enhancement using the diffusion model (LLDE).

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notebooks

Set of Jupyter Notebooks linked to Roboflow Blogpost and used in our YouTube videos.

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pykan

Kolmogorov Arnold Networks

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Rheology_PINNs

Repository holding the physics informed machine learning codes to characterize unknown rheology of thermal greases

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segment-anything

The repository provides code for running inference with the SegmentAnything Model (SAM), links for downloading the trained model checkpoints, and example notebooks that show how to use the model.

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vibrations-of-mindlin-plates

A collection of Python codes to find the natural frequencies of Reissner-Mindlin (thick) plates.

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Visualize-Yolo-annotations

A simple tool that will help visualize bounding boxes in darknet/yolo format

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X-AnyLabeling

Effortless data labeling with AI support from Segment Anything and other awesome models.

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yolov5

YOLOv5 in PyTorch > ONNX > CoreML > iOS

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yolov7

Implementation of paper - YOLOv7: Trainable bag-of-freebies sets new state-of-the-art for real-time object detectors

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