Underwater Animal Detection Using YOLOV4

Author(s):  
Mohamed Syazwan Asyraf Bin Rosli ◽  
Iza Sazanita Isa ◽  
Mohd Ikmal Fitri Maruzuki ◽  
Siti Noraini Sulaiman ◽  
Ibrahim Ahmad
Keyword(s):  
2020 ◽  
Vol E103.B (12) ◽  
pp. 1394-1402
Author(s):  
Hiroshi SAITO ◽  
Tatsuki OTAKE ◽  
Hayato KATO ◽  
Masayuki TOKUTAKE ◽  
Shogo SEMBA ◽  
...  

2021 ◽  
Vol 13 (12) ◽  
pp. 2318
Author(s):  
Darío G. Lema ◽  
Oscar D. Pedrayes ◽  
Rubén Usamentiaga ◽  
Daniel F. García ◽  
Ángela Alonso

The recognition of livestock activity is essential to be eligible for subsides, to automatically supervise critical activities and to locate stray animals. In recent decades, research has been carried out into animal detection, but this paper also analyzes the detection of other key elements that can be used to verify the presence of livestock activity in a given terrain: manure piles, feeders, silage balls, silage storage areas, and slurry pits. In recent years, the trend is to apply Convolutional Neuronal Networks (CNN) as they offer significantly better results than those obtained by traditional techniques. To implement a livestock activity detection service, the following object detection algorithms have been evaluated: YOLOv2, YOLOv4, YOLOv5, SSD, and Azure Custom Vision. Since YOLOv5 offers the best results, producing a mean average precision (mAP) of 0.94, this detector is selected for the creation of a livestock activity recognition service. In order to deploy the service in the best infrastructure, the performance/cost ratio of various Azure cloud infrastructures are analyzed and compared with a local solution. The result is an efficient and accurate service that can help to identify the presence of livestock activity in a specified terrain.


Author(s):  
Gabriel S. Ferrante ◽  
Felipe M. Rodrigues ◽  
Fernando R. H. Andrade ◽  
Rudinei Goularte ◽  
Rodolfo I. Meneguette

Author(s):  
Pravin A. Dhulekar ◽  
Sanjay T. Gandhe ◽  
Ganesh R. Bagad ◽  
Sudhanshu S. Dwivedi
Keyword(s):  

2019 ◽  
Vol 8 (2S8) ◽  
pp. 1311-1313

With the increasing awareness of environmental protection, people are paying more and more attention to the protection of wild animals. Their survive-al is closely related to human beings. As progress in target detection has achieved unprecedented success in computer vision, we can more easily tar-get animals. Animal detection based on computer vision is an important branch of object recognition, which is applied to intelligent monitoring, smart driving, and environmental protection. At present, many animal detection methods have been proposed. However, animal detection is still a challenge due to the complexity of the background, the diversity of animal pos-es, and the obstruction of objects. An accurate algorithm is needed. In this paper, the fast Region-based Convolutional Neural Network (Faster R-CNN) is used. The proposed method was tested using the CAMERA_TRAP DATASET. The results show that the proposed animal detection method based on Faster R-CNN performs better in terms of detection accuracy when its performance is compared to conventional schemes


2017 ◽  
Vol 5 ◽  
Author(s):  
Yves Bas ◽  
Didier Bas ◽  
Jean-François Julien
Keyword(s):  

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