A novel method for identifying rice seed purity based on hybrid machine learning algorithms
- URL: http://arxiv.org/abs/2406.07581v1
- Date: Sun, 9 Jun 2024 17:13:25 GMT
- Title: A novel method for identifying rice seed purity based on hybrid machine learning algorithms
- Authors: Phan Thi-Thu-Hong, Vo Quoc-Trinh, Nguyen Huu-Du,
- Abstract summary: In the grain industry, the identification of seed purity is a crucial task as it is an important factor in evaluating the quality of seeds.
This study proposes a novel method for automatically identifying the rice seed purity of a certain rice variety based on hybrid machine learning algorithms.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In the grain industry, the identification of seed purity is a crucial task as it is an important factor in evaluating the quality of seeds. For rice seeds, this property allows for the reduction of unexpected influences of other varieties on rice yield, nutrient composition, and price. However, in practice, they are often mixed with seeds from others. This study proposes a novel method for automatically identifying the rice seed purity of a certain rice variety based on hybrid machine learning algorithms. The main idea is to use deep learning architectures for extracting important features from the raw data and then use machine learning algorithms for classification. Several experiments are conducted following a practical implementation to evaluate the performance of the proposed model. The obtained results show that the novel method improves significantly the performance of existing methods. Thus, it can be applied to design effective identification systems for rice seed purity.
Related papers
- Semi-Supervised Weed Detection for Rapid Deployment and Enhanced Efficiency [2.8444649426160304]
This paper introduces a novel method for semi-supervised weed detection, comprising two main components.
Firstly, a multi-scale feature representation technique is employed to capture distinctive weed features across different scales.
Secondly, we propose an adaptive pseudo-label assignment strategy, leveraging a small set of labelled images during training.
arXiv Detail & Related papers (2024-05-12T23:34:06Z) - Seed Kernel Counting using Domain Randomization and Object Tracking Neural Networks [0.0]
We propose a seed kernel counter that uses a low-cost mechanical hopper, trained YOLOv8 neural network model, and object tracking algorithms on StrongSORT and ByteTrack to estimate cereal yield from videos.
The experiment yields a seed kernel count with an accuracy of 95.2% and 93.2% for Soy and Wheat respectively using the StrongSORT algorithm, and an accuray of 96.8% and 92.4% for Soy and Wheat respectively using the ByteTrack algorithm.
arXiv Detail & Related papers (2023-08-10T19:56:15Z) - Fruit Ripeness Classification: a Survey [59.11160990637616]
Many automatic methods have been proposed that employ a variety of feature descriptors for the food item to be graded.
Machine learning and deep learning techniques dominate the top-performing methods.
Deep learning can operate on raw data and thus relieve the users from having to compute complex engineered features.
arXiv Detail & Related papers (2022-12-29T19:32:20Z) - Vision-Based Defect Classification and Weight Estimation of Rice Kernels [12.747541089354538]
We present an automatic visual quality estimation system of rice kernels, to classify the sampled rice kernels according to their types of flaws, and evaluate their quality via the weight ratios of the perspective kernel types.
We define a novel metric to measure the relative weight of each kernel in the image from its area, such that the relative weight of each type of kernels with regard to the all samples can be computed and used as the basis for rice quality estimation.
arXiv Detail & Related papers (2022-10-06T03:58:05Z) - MetaRF: Differentiable Random Forest for Reaction Yield Prediction with
a Few Trails [58.47364143304643]
In this paper, we focus on the reaction yield prediction problem.
We first put forth MetaRF, an attention-based differentiable random forest model specially designed for the few-shot yield prediction.
To improve the few-shot learning performance, we further introduce a dimension-reduction based sampling method.
arXiv Detail & Related papers (2022-08-22T06:40:13Z) - Potato Crop Stress Identification in Aerial Images using Deep
Learning-based Object Detection [60.83360138070649]
The paper presents an approach for analyzing aerial images of a potato crop using deep neural networks.
The main objective is to demonstrate automated spatial recognition of a healthy versus stressed crop at a plant level.
Experimental validation demonstrated the ability for distinguishing healthy and stressed plants in field images, achieving an average Dice coefficient of 0.74.
arXiv Detail & Related papers (2021-06-14T21:57:40Z) - Deep Multi-view Image Fusion for Soybean Yield Estimation in Breeding
Applications Deep Multi-view Image Fusion for Soybean Yield Estimation in
Breeding Applications [7.450586438835518]
The objective of this study is to develop a machine learning (ML) approach adept at soybean pod counting.
We developed a multi-view image-based yield estimation framework utilizing deep learning architectures.
Our results demonstrate the promise of ML models in making breeding decisions with significant reduction of time and human effort.
arXiv Detail & Related papers (2020-11-13T20:37:04Z) - Crop and weed classification based on AutoML [2.1300809288243188]
CNN models already play an important role in classification of crop and weed with high accuracy, more than 95% as reported in literature.
In this paper, we applied autonomous machine learning with a new objective function for crop and weed classification, achieving higher accuracy and lower crop killing rate.
arXiv Detail & Related papers (2020-10-28T02:35:17Z) - Deep Semi-supervised Knowledge Distillation for Overlapping Cervical
Cell Instance Segmentation [54.49894381464853]
We propose to leverage both labeled and unlabeled data for instance segmentation with improved accuracy by knowledge distillation.
We propose a novel Mask-guided Mean Teacher framework with Perturbation-sensitive Sample Mining.
Experiments show that the proposed method improves the performance significantly compared with the supervised method learned from labeled data only.
arXiv Detail & Related papers (2020-07-21T13:27:09Z) - Pollen13K: A Large Scale Microscope Pollen Grain Image Dataset [63.05335933454068]
This work presents the first large-scale pollen grain image dataset, including more than 13 thousands objects.
The paper focuses on the employed data acquisition steps, which include aerobiological sampling, microscope image acquisition, object detection, segmentation and labelling.
arXiv Detail & Related papers (2020-07-09T10:33:31Z) - Two-View Fine-grained Classification of Plant Species [66.75915278733197]
We propose a novel method based on a two-view leaf image representation and a hierarchical classification strategy for fine-grained recognition of plant species.
A deep metric based on Siamese convolutional neural networks is used to reduce the dependence on a large number of training samples and make the method scalable to new plant species.
arXiv Detail & Related papers (2020-05-18T21:57:47Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.