Paper Title :Broiler Disease Detection using Yolov4
Author :Abhishek C, Abhishek Ashok Naik, Chinmayi B S, Vineeta
Article Citation :Abhishek C ,Abhishek Ashok Naik ,Chinmayi B S ,Vineeta ,
(2021 ) " Broiler Disease Detection using Yolov4 " ,
International Journal of Advances in Science, Engineering and Technology(IJASEAT) ,
pp. 19-22,
Volume-9,Issue-3
Abstract : Deep learning techniques have been highly potent in solving business problems related to Computer Vision and
Natural Language Processing. It covers a broad range of applications and one of them is a disease detection tool for poultry
health care management. Poultry farms are prone to various types of infection and if left alone, these infections can spread
rapidly throughout the farm, resulting in the death of many birds and economic impact on the farm owners. A recent study
showcased a tool that can identify two broiler diseases by analyzing its droppings. A deep convolutional neural network was
used to achieve the goal. Our study expands on this initial work, with an additional disease to analyze and the use of a stateof-
the-art object detection algorithm. We employed YOLOv4 for the task and from the experiment results, our model’s
prediction time is much faster, at 23 milliseconds with a mean average precision of 87.5%. The experiment also involved
training a scaled-down version of YOLOv4 for on-device computation.
Keywords - Object Detection, Yolov4, Broiler Dropping Classification.
Type : Research paper
Published : Volume-9,Issue-3
Copyright: © Institute of Research and Journals
|
 |
| |
 |
PDF |
| |
Viewed - 70 |
| |
Published on 2021-11-13 |
|