Nucleia image segmentation with U-net...
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Updated
Mar 9, 2022 - Python
Nucleia image segmentation with U-net...
Visual analysis of the amount of advertising in the urban environment using computer vision (U-Net + PSP-Net) || Визуальный анализ заполненности городской среды элементами рекламы с помощью компьютерного зрения (U-Net + PSP-Net)
Grayscale image colorization using a U-Net CNN (with VGG-19) and perceptual loss.
Satellite image segmentation using deep learning U-Net model, built at Hack36
Semantic Image Segmentation task solution for the Oxford-IIIT Pet dataset using U-Net neural network, Hyperband and Transfer Learning. AGH 2023/24
The aim of this project is to detect copy move forgery in image forgery detection. Based on Deep learning techniques(CNN, NN)
Pothole Segmentation using a custom U-Net Segmentation model built and trained from scratch using TensorFlow and Keras
uav-image-segmentation for hurrican-hurvey-flood-damage by unet
A repo to contain CNN-based models for brain tumor segmentation
Breast cancer is one of the most common causes of death among women worldwide. Early detection helps reduce the number of premature deaths. In the study, I am working on creating a convolutional neural network capable of identifying tumor areas within medical images (which were taken with ultrasound).
U-Net from Scratch for Brain Tumor Segmentation
Damaged image restauration using a GAN model with a U-Net with skip connection autoencoder as a generator
Testing performances of different models of DL on a small training dataset of Solar Cells to find defects
Using deep learning a U-net architecture is used to make segmentation, detection, and extraction of the lower left third molar. The result of the proposed U-net is compared with Attention U-net and U-net++.
Tensorflow (Keras) code for "Multiclass semantic segmentation in satellite images. This project is only for learning purposes. State-of-the-art U-Net is implemented.
U-NET used for semantic segmentation of cultivated land in remote sensing image
"Attention UW-Net: A fully connected model for automatic segmentation and annotation of chest X-ray" by Debojyoti Pal, Pailla Balakrishna Reddy, and Sudipta Roy.
We segmented the Brain tumor using Brats dataset and as we know it is in 3D format we used the slicing method in which we slice the images in 2D form according to its 3 axis and then giving the model for training then combining waits to segment brain tumor. We used UNET model for our segmentation.
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