HE
hellochick/Indoor-segmentation
Indoor segmentation for robot navigating, which is based on deeplab model in TensorFlow.
Indoor-segmentation
Introduction
This is an implementation of TensorFlow-based (TF1) DeepLab-ResNet for Indoor-scene segmentation. The provided model is trained on the ade20k dataset. The code is inherited from tensorflow-deeplab-resnet by Drsleep. Since this model is for robot navigating, we re-label 150 classes into 27 classes in order to easily classify obstacles and road.
Re-label list:
1 (wall) <- 9(window), 15(door), 33(fence), 43(pillar), 44(sign board), 145(bullertin board)
4 (floor) <- 7(road), 14(ground, 30(field), 53(path), 55(runway)
5 (tree) <- 18(plant)
8 (furniture) <- 8(bed), 11(cabinet), 14(sofa), 16(table), 19(curtain), 20(chair), 25(shelf), 34(desk)
7 (stairs) <- 54(stairs)
26(others) <- class number larger than 26
Quick Start
Install dependency
The codes are test on Python 3.7. Please run the following script to install the packages.
pip install -r requirements.txtDownload pretrained model
Run the following script to download the provided pretrained model from Google Drive.
./download_models.shOr directly get the pretrained model from Google Drive.
Demo
Run the following sample command for inference
python inference.py --img_path input/IMG_0416_640x480.png --restore_from=pretrained_models/ResNet101/
Result
Video
Image
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