Forest-Fire-Detection-through-UAV-imagery-using-CNNs | natural disaster , causing irreparable damage
kandi X-RAY | Forest-Fire-Detection-through-UAV-imagery-using-CNNs Summary
kandi X-RAY | Forest-Fire-Detection-through-UAV-imagery-using-CNNs Summary
Forest-Fire-Detection-through-UAV-imagery-using-CNNs is a Jupyter Notebook library. Forest-Fire-Detection-through-UAV-imagery-using-CNNs has no bugs, it has no vulnerabilities and it has low support. You can download it from GitHub.
Wildfire is a natural disaster, causing irreparable damage to local ecosystem. Sudden and uncontrollable wildfires can be a real threat to residents’ lives. Statistics from National Interagency Fire Center (NIFC) in the USA show that the burned area doubled from 1990 to 2015 in the USA. Recent wildfires in northern California (reported by CNN) have already resulted in more than 40 deaths and 50 missing. More than 200,000 local residents have been evacuated under emergency. The wildfires occur 220,000 times per year globally, the annual burned area is over 6 million hectares. Accurate and early detection of wildfire is therefore of great importance. Fire detection task is crucial for people safety. Several fire detection systems were developed to prevent damages caused by fire. One can find different technical solutions. Most of them are sensors based and are also generally limited to indoors. They detect the presence of particles generated by smoke and fire by ionization, which requires a close proximity to the fire. Consequently, they cannot be used in large covered area. Moreover, they cannot provide information about initial fire location, direction of smoke propagation, size of the fire, growth rate of the fire, etc. To get over such limitations video fire detection systems are used
Wildfire is a natural disaster, causing irreparable damage to local ecosystem. Sudden and uncontrollable wildfires can be a real threat to residents’ lives. Statistics from National Interagency Fire Center (NIFC) in the USA show that the burned area doubled from 1990 to 2015 in the USA. Recent wildfires in northern California (reported by CNN) have already resulted in more than 40 deaths and 50 missing. More than 200,000 local residents have been evacuated under emergency. The wildfires occur 220,000 times per year globally, the annual burned area is over 6 million hectares. Accurate and early detection of wildfire is therefore of great importance. Fire detection task is crucial for people safety. Several fire detection systems were developed to prevent damages caused by fire. One can find different technical solutions. Most of them are sensors based and are also generally limited to indoors. They detect the presence of particles generated by smoke and fire by ionization, which requires a close proximity to the fire. Consequently, they cannot be used in large covered area. Moreover, they cannot provide information about initial fire location, direction of smoke propagation, size of the fire, growth rate of the fire, etc. To get over such limitations video fire detection systems are used
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Forest-Fire-Detection-through-UAV-imagery-using-CNNs has a low active ecosystem.
It has 26 star(s) with 23 fork(s). There are 1 watchers for this library.
It had no major release in the last 6 months.
Forest-Fire-Detection-through-UAV-imagery-using-CNNs has no issues reported. There are no pull requests.
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Forest-Fire-Detection-through-UAV-imagery-using-CNNs has no bugs reported.
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Forest-Fire-Detection-through-UAV-imagery-using-CNNs has no vulnerabilities reported, and its dependent libraries have no vulnerabilities reported.
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