IDFire: Image Dataset for Indoor Fire Load Recognition

Citation Author(s):
Jia-Rui
Lin
Tsinghua University
Yu-Cheng
Zhou
Tsinghua University
Ke-Xiao
Yan
Tsinghua University
Zhen-Zhong
Hu
Tsinghua University
Submitted by:
Jia-Rui Lin
Last updated:
Mon, 06/20/2022 - 20:01
DOI:
10.21227/qkk3-2145
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Abstract 

Accurate fire load (combustible objects) information is crucial for safety design and resilience assessment of buildings. Traditional fire load acquisition methods, such as fire load survey, which are time-consuming, tedious, and error-prone, failed to adapt to dynamic changed indoor scenes. As a starting point of automatic fire load estimation, fast recognition and detection of indoor fire load are important. Thus, A dataset containing images of indoor scenes and annotations of instance segmentation is developed in this research. In total, 1015 images are contained in the dataset, distributed across five typical scenes: bedroom, dining room, hospital, living room, and office. 

Instructions: 

Setup & Usage

·        Install Pytorch 1.6+ and detectron2

·        Clone or download the repo

git clone https://github.com/Zhou-Yucheng/fire-load-detection.git
cd fire-load-detection/src

·        Unzip the dataset trainval1k.zip in data/indoor-scene

·        Run python3 train.py --help for more information about usage

·        Run train.py with arguments, for example:

 

python3 train.py -m R50 -b 4 -l 2e-3 -i 6k --step 4k