Comparative analysis of 2D and 3D vineyard yield prediction system using artificial intelligence
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Published:2023-10-30
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ISSN:2239-6268
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Container-title:Journal of Agricultural Engineering
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language:
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Short-container-title:J Agric Eng
Author:
Barbole Dhanashree,Jadhav Parul M.
Abstract
Traditional techniques for estimating the weight of clusters in a winery, generally consist of manually counting the variety of clusters per vine, and scaling by means of the entire variety of vines. This method can be arduous, costly, and its accuracy is dependent on the scale of the sample. To overcome these problems, hybrid approaches of Computer Vision (CV), Deep Learning (DL) and Machine Learning (ML) based vineyard yield prediction systems are proposed. Self-prepared datasets are used for comparative analysis of 2D and 3D yield prediction systems for vineyards. DL-based approach for segmentation operation on an RGB-D image dataset created with the D435I camera is used along with the ML-based weight prediction technique of grape clusters present in the single image is employed using these datasets. A comparative analysis of the DL-based Keras regression model and various ML-based regression models for the weight prediction task is taken into account, and finally a prediction model is proposed to estimate the yield of the entire vineyard. The analysis shows improved performance with the 3D vineyard yield prediction system compared to the 2D vineyard yield prediction system with grape cluster segmentation pixel accuracy upto 94.81% and yield prediction accuracy upto 99.58%.
Publisher
PAGEPress Publications
Subject
Industrial and Manufacturing Engineering,Mechanical Engineering,Bioengineering
Reference40 articles.
1. Chen S., Shivakumar S., Dcunha, S., Das, J., Okon, E., Qu, C., Kumar, V. (2017). Counting apples and oranges with deep learning: A data-driven approach. IEEE Robotics and Automation Letters, 2, 781–788. 2. Altaheri, H., Alsulaiman, M., & Muhammad, G. (2019). Date fruit classification for robotic harvesting in a natural environment using deep learning. IEEE Access, 7, 117115–117133. 3. Arad, B., Kurtser, P., Barnea, E., Ha, B., Edan, Y., & Ben-Shahar, O. (2019). Controlled Lighting and Illumination-Independent Target Detection for Real-Time Cost-Efficient Applications. The Case Study of Sweet Pepper Robotic Harvesting. Article in sensors. 4. Badeka, E., Kalabokas, T., Tziridis, K., Nicolaou, A., Vrochidou, E., Mavridou, E., . . . Pachidis, T. (2019). Grapes Visual Segmentation for Harvesting Robots Using Local Texture Descriptors. Computer Vision Systems, 98–109. 5. Baeten, J., Donn, K., Boedrij, S., & Beckers, W. (2008). Autonomous fruit picking machine: A robotic apple harvester. Field and Service Robotics, 42, 531–539.
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