| Literature DB >> 32158451 |
Arun Sharma1, Deepshikha Satish1, Sushmita Sharma1, Dinesh Gupta1.
Abstract
The purity of seeds is the most important factor in agriculture that determines crop yield, price, and quality. Rice is a major staple food consumed in different forms globally. The identification of high yielding and good quality paddy seeds is a challenging job and mainly dependent on expensive molecular techniques. The practical and day-to-day usage of the molecular-laboratory based techniques are very costly and time-consuming, and involves several logistical issues too. Moreover, such techniques are not easily accessible to paddy farmers. Thus, there is an unmet need to develop alternative, easily accessible and rapid methods for correct identification of paddy seed varieties, especially of commercial importance. We have developed iRSVPred, deep learning based on seed images, for the identification and differentiation of ten major varieties of basmati rice namely, Pusa basmati 1121 (1121), Pusa basmati 1509 (1509), Pusa basmati 1637 (1637), salt-tolerant basmati rice variety CSR 30 (CSR-30), Dehradoon basmati Type-3 (DHBT-3), Pusa Basmati-1 (PB-1), Pusa Basmati-6 (PB-6), Basmati -370 (BAS-370), Pusa Basmati 1718 (1718) and Pusa Basmati 1728 (1728). The method has an overall accuracy of 100% and 97% on the training set (total 61,632 images) and internal validation set (total 15,408 images), respectively. Furthermore, accuracies of greater than or equal to 80% have been achieved for all the ten varieties on the external validation dataset (642 images) used in the study. The iRSVPred web-server is freely available at http://14.139.62.220/rice/.Entities:
Keywords: artificial intelligence; basmati; deep learning; images based classification; rice variety prediction; variety prediction server
Year: 2020 PMID: 32158451 PMCID: PMC7052261 DOI: 10.3389/fpls.2019.01791
Source DB: PubMed Journal: Front Plant Sci ISSN: 1664-462X Impact factor: 5.753
Figure 1Flowchart for the methodology used for the development of iRSVPred web-server.
Multiple augmentation models (251 and 502 Epochs respectively) performance on external validation dataset.
| Sr. No. | Variety/other seeds and related entities | No. of images used for validation | Accuracy (%) | Accuracy (%) for images | |||
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| 1 | 1121 | 50 | 62 | 64 | 86 | 82 | 80 |
| 2 | 1509 | 50 | 96 | 98 | 96 | 98 | 98 |
| 3 | 1637 | 50 | 92 | 90 | 90 | 100 | 98 |
| 4 | 1718 | 50 | 60 | 60 | 84 | 84 | 82 |
| 5 | 1728 | 50 | 86 | 82 | 56 | 68 | 56 |
| 6 | BAS 370 | 50 | 98 | 98 | 100 | 100 | 100 |
| 7 | CSR 30 | 50 | 96 | 98 | 96 | 90 | 92 |
| 8 | DHBT 3 | 50 | 100 | 100 | 100 | 100 | 100 |
| 9 | PB 1 | 50 | 86 | 84 | 92 | 84 | 98 |
| 10 | PB 6 | 50 | 80 | 80 | 64 | 68 | 66 |
| 11 | Other seed and related entities | 142 | 100 | 100 | 99.3 | 100 | 100 |
Figure 2The training and validation of AI- based prediction models (used for the iRSVPred web-server), along with the types of images used.
Figure 3Flow diagram representing dataset preparation, model building and evaluation, along with usage of the best prediction models (on iRSVPred web-server).
Training and internal validation set accuracies accompanied with validation loss values for paddy seeds variety prediction models developed using original images and different types of augmented images.
| Sr. No. | Augmentation type | No. of training set images | No. of internal validation set images | Training accuracy (%) | Validation accuracy (%) | Validation loss |
|---|---|---|---|---|---|---|
| 1 | Multiple augmentation model-I (MAM-I) | 61632 | 15408 | 98.0 | 93.4 | 0.239 |
| 2 | Multiple augmentation model-II (MAM-II) | 61632 | 15408 | 100.0 | 97.7 | 0.155 |
Figure 4Screenshots showing step-by-step usage of iRSVPred web-server.