As of 24 October 2018 YOLT has been superceded by SIMRDWN
YOLT is an extension of the YOLO v2 framework that can evaluate satellite images of arbitrary size, and runs at ~50 frames per second. Current applications include vechicle detection (cars, airplanes, boats), building detection, and airport detection.
The YOLT code alters a number of the files in src/*.c to allow further functionality. We also built a python wrapper around the C functions to improve flexibility. We utililize the default data format of YOLO, which places images and labels in different directories. For example:
/data/images/train1.tif
/data/labels/train1.txt
Each line of the train1.txt file has the format
<object-class> <x> <y> <width> <height>
Where x, y, width, and height are relative to the image's width and height. Labels can be created with LabelImg, and converted to the appropriate format with the /yolt/scripts/convert.py script.
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arXiv paper: You Only Look Twice: Rapid Multi-Scale Object Detection In Satellite Imagery
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Blog2: You Only Look Twice (Part II) — Vehicle and Infrastructure Detection in Satellite Imagery
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Blog4: Car Localization and Counting with Overhead Imagery, an Interactive Exploration
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Blog5: The Satellite Utility Manifold; Object Detection Accuracy as a Function of Image Resolution
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Blog6: Panchromatic to Multispectral: Object Detection Performance as a Function of Imaging Bands
The following has been tested on Ubuntu 16.04.2
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Install nvidia-docker
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Build docker file
nvidia-docker build -t yolt yolt_docker_name /path_to_yolt/docker
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Launch the docker container
nvidia-docker run -it -v /raid:/raid yolt_docker_name # '/raid' is the root directory of your machine, which will # be shared with the docker container
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Run Makefile
cd /path_to_yolt/ make clean make
Commands should be executed within the docker file. To run the container (with name yolt_train0):
nvidia-docker run -it -v --name yolt_train0 yolt_docker_name
cd /path_to_yolt/scripts
python yolt2.py --help
# e.g. train boats and planes
cd /path_to_yolt/scripts
python yolt2.py \
--mode train \
--outname 3class_boat_plane \
--object_labels_str boat,boat_harbor,airplane \
--cfg_file ave_standard.cfg \
--nbands 3 \
--train_images_list_file boat_airplane_all.txt \
--single_gpu_machine 0 \
--keep_valid_slices False \
--max_batches 60000 \
--gpu 0
# e.g. test on boats, cars, and airplanes
cd /path_to_yolt/scripts
python yolt2.py \
--mode valid \
--outname qgis_labels_all_boats_planes_cars_buffer \
--object_labels_str airplane,airport,boat,boat_harbor,car \
--cfg_file ave_standard.cfg \
--valid_weight_dir train_cowc_cars_qgis_boats_planes_cfg=ave_26x26_2017_11_28_23-11-36 \
--weight_file ave_standard_30000_tmp.weights \
--valid_testims_dir qgis_validation/all \
--keep_valid_slices False \
--valid_make_pngs True \
--valid_make_legend_and_title False \
--edge_buffer_valid 1 \
--valid_box_rescale_frac 1 \
--plot_thresh_str 0.4 \
--slice_sizes_str 416 \
--slice_overlap 0.2 \
--gpu 2
- Include train/test example
- Upload data preparation scripts
- Describe multispectral data handling
- Describle initial results with YOLO v3
- Describe improve labeling methods
If you plan on using YOLT in your work, please consider citing YOLO and YOLT