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Automatically Identifying & Counting Animals in Camera Trap Image Using DL

Issue Abstract

Abstract
It is vital to make a remember of animals as they're being extinct now a days, to be able to store them we should hold a word well in order that we are able to take vital measures to store them. In current approach there may be simplest guide checking in which a individual want to provide to hold a remember of animals. Which take a lot of time to perceive the animals. To conquer the ones troubles we're introducing an automated figuring out and counting the animals through the use of deep studying methods.This manner offers an correct effects to detects and hold right remember of animals.
Keywords: Object detection, OpenCV, MobileNet SSD, Deep Learning.


Author Information
M. Indu Prasad
Issue No
5
Volume No
4
Issue Publish Date
05 Apr 2022
Issue Pages
10-12

Issue References

References 
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