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Depth-Map-Prediction-with-Multi-Scale-Deep-network
Depth-Map-Prediction-with-Multi-Scale-Deep-network PublicForked from zzzyq/Depth-Map-Prediction-with-Multi-Scale-Deep-network
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depth_CNN
depth_CNN PublicForked from erithwik/Depth-detection-CNN
A convolutional neural network that takes in two stereo images and outputs a depth map with rather reasonable accuracy. The dataset is taken from https://github.com/LouisFoucard/DepthMap_dataset, a…
Python
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depth_reconstruction
depth_reconstruction PublicForked from kor-al/depth_reconstruction
Depth Reconstruction Research: interpolation and super-resolution of depth maps using deep convolutional neural networks.
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CV-Depth-Estimation-in-Images
CV-Depth-Estimation-in-Images PublicForked from bedarkarpriyanka/CV-Depth-Estimation-in-Images
Implemented "Depth map prediction from a single image using a multi-scale deep network."
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singleimage-depthmap
singleimage-depthmap PublicForked from nathan-i-strong/singleimage-depthmap
This is an implementation of Depth Map Prediction from a Single Image using a Multi-Scale Deep Network in TensorFlow 2
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DPDnet-A-robust-people-detector-using-deep-learning-with-an-overhead-depth-camera
DPDnet-A-robust-people-detector-using-deep-learning-with-an-overhead-depth-camera PublicForked from dfuentes-uah/DPDnet-A-robust-people-detector-using-deep-learning-with-an-overhead-depth-camera
This paper proposes a deep learning-based method to detect multiple people from a single overhead depth image with high precision. Our neural network, called DPDnet, is composed by two fully-convol…
Python
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