Developing Edge AI Computer Vision for Smart Poultry Farms Using Deep Learning and HPC

Author:

Cakic Stevan12ORCID,Popovic Tomo12ORCID,Krco Srdjan3ORCID,Nedic Daliborka3,Babic Dejan1,Jovovic Ivan1

Affiliation:

1. Faculty for Information Systems and Technologies, University of Donja Gorica, Oktoih 1, 81000 Podgorica, Montenegro

2. DigitalSmart, Bul. Dz. Vasingtona bb, 81000 Podgorica, Montenegro

3. DunavNET, Bul. Oslobodjenja 133/2, 21000 Novi Sad, Serbia

Abstract

This research describes the use of high-performance computing (HPC) and deep learning to create prediction models that could be deployed on edge AI devices equipped with camera and installed in poultry farms. The main idea is to leverage an existing IoT farming platform and use HPC offline to run deep learning to train the models for object detection and object segmentation, where the objects are chickens in images taken on farm. The models can be ported from HPC to edge AI devices to create a new type of computer vision kit to enhance the existing digital poultry farm platform. Such new sensors enable implementing functions such as counting chickens, detection of dead chickens, and even assessing their weight or detecting uneven growth. These functions combined with the monitoring of environmental parameters, could enable early disease detection and improve the decision-making process. The experiment focused on Faster R-CNN architectures and AutoML was used to identify the most suitable architecture for chicken detection and segmentation for the given dataset. For the selected architectures, further hyperparameter optimization was carried out and we achieved the accuracy of AP = 85%, AP50 = 98%, and AP75 = 96% for object detection and AP = 90%, AP50 = 98%, and AP75 = 96% for instance segmentation. These models were installed on edge AI devices and evaluated in the online mode on actual poultry farms. Initial results are promising, but further development of the dataset and improvements in prediction models is needed.

Funder

European High-Performance Computing Joint Undertaking

European Union’s Horizon 2020 research and innovation programme and Germany, Italy, Slovenia, France, Spain

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference38 articles.

1. FAO (2018). The Future of Food and Agriculture: Alternative Pathways to 2050, Food and Agriculture Organization of the United Nations.

2. USDA (2023, January 20). Livestock and Poultry: World Markets and Trade, Available online: https://www.fas.usda.gov/data/livestock-and-poultry-world-markets-and-trade.

3. ETP4HPC (2022). Strategic Research Agenda for High-Performance Computing in Europe: European HPC Research Priorities 2022–2027, European Technology Platform for High Performance Computing, NS Oegstgeest.

4. Cakic, S., Popovic, T., Krco, S., and Nedic, D. (2022, January 1–3). Babic, Developing Object Detection Models for Camera Applications in Smart Poultry Farms. Proceedings of the 2022 IEEE International Conference on Omni-layer Intelligent Systems (COINS), Barcelona, Spain.

5. FF4EuroHPC (2023, January 20). HPC Innovation for European SMEs. Available online: https://cordis.europa.eu/project/id/951745.

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