Wheat is a very important food crop for mankind. Many new varieties are bred every year. The accurate judgment of wheat varieties can promote the development of the wheat industry and the protection of breeding property rights. Although gene analysis technology can be used to accurately determine wheat varieties, it is costly, time-consuming, and inconvenient. Traditional machine learning methods can significantly reduce the cost and time of wheat cultivars identification, but the accuracy is not high. In recent years, the relatively popular deep learning methods have further improved the accuracy on the basis of traditional machine learning, whereas it is quite difficult to continue to improve the identification accuracy after the converge...
Accurate wheat spike detection is crucial in wheat field phenotyping for precision farming. Advances...
Wheat is one of the major crops in the world, with a global demand expected to reach 850 million ton...
Not AvailableHigh-throughput plant phenotyping integrated with computer vision is an emerging topic ...
Wheat is a significant cereal for humans, with diverse varieties. The growth of the wheat industry a...
Wheat variety recognition and authentication are essential tasks of the quality assessment in the gr...
WOS:000794076800001Determining the variety of wheat is important to know the physical and chemical p...
IntroductionIn the actual planting of wheat, there are often shortages of seedlings and broken seedl...
Abstract Background Field phenotyping by remote sensing has received increased interest in recent ye...
Wheat is the third most harvested and consumed grain in the world. However, a large part of wheat cr...
Identifying seed manually in agriculture takes a long time for practical applications. Therefore, an...
Wheat plant phenotyping is crucial for plant breeding and crop management. Traditional methods, howe...
Abstract: India is the second largest producer of wheat in the world after China. Specifying the qua...
The number of wheat ears is an essential indicator for wheat production and yield estimation, but ac...
Artificial neural network (ANN) models have found wide applications, including prediction, classific...
The number of farmers who use smart phones is increasing rapidly and furthermore RGB and thermal cam...
Accurate wheat spike detection is crucial in wheat field phenotyping for precision farming. Advances...
Wheat is one of the major crops in the world, with a global demand expected to reach 850 million ton...
Not AvailableHigh-throughput plant phenotyping integrated with computer vision is an emerging topic ...
Wheat is a significant cereal for humans, with diverse varieties. The growth of the wheat industry a...
Wheat variety recognition and authentication are essential tasks of the quality assessment in the gr...
WOS:000794076800001Determining the variety of wheat is important to know the physical and chemical p...
IntroductionIn the actual planting of wheat, there are often shortages of seedlings and broken seedl...
Abstract Background Field phenotyping by remote sensing has received increased interest in recent ye...
Wheat is the third most harvested and consumed grain in the world. However, a large part of wheat cr...
Identifying seed manually in agriculture takes a long time for practical applications. Therefore, an...
Wheat plant phenotyping is crucial for plant breeding and crop management. Traditional methods, howe...
Abstract: India is the second largest producer of wheat in the world after China. Specifying the qua...
The number of wheat ears is an essential indicator for wheat production and yield estimation, but ac...
Artificial neural network (ANN) models have found wide applications, including prediction, classific...
The number of farmers who use smart phones is increasing rapidly and furthermore RGB and thermal cam...
Accurate wheat spike detection is crucial in wheat field phenotyping for precision farming. Advances...
Wheat is one of the major crops in the world, with a global demand expected to reach 850 million ton...
Not AvailableHigh-throughput plant phenotyping integrated with computer vision is an emerging topic ...