A combined CNN and LSH for fast plant species classification

Author(s):  
Abdelkhalak Bahri ◽  
Karim El Moutaoikil ◽  
Imad Badi
2020 ◽  
Vol 12 (8) ◽  
pp. 1246 ◽  
Author(s):  
Simon Leminen Madsen ◽  
Solvejg Kopp Mathiassen ◽  
Mads Dyrmann ◽  
Morten Stigaard Laursen ◽  
Laura-Carlota Paz ◽  
...  

For decades, significant effort has been put into the development of plant detection and classification algorithms. However, it has been difficult to compare the performance of the different algorithms, due to the lack of a common testbed, such as a public available annotated reference dataset. In this paper, we present the Open Plant Phenotype Database (OPPD), a public dataset for plant detection and plant classification. The dataset contains 7590 RGB images of 47 plant species. Each species is cultivated under three different growth conditions, to provide a high degree of diversity in terms of visual appearance. The images are collected at the semifield area at Aarhus University, Research Centre Flakkebjerg, Denmark, using a customized data acquisition platform that provides well-illuminated images with a ground resolution of ∼6.6 px mm − 1 . All images are annotated with plant species using the EPPO encoding system, bounding box annotations for detection and extraction of individual plants, applied growth conditions and time passed since seeding. Additionally, the individual plants have been tracked temporally and given unique IDs. The dataset is accompanied by two experiments for: (1) plant instance detection and (2) plant species classification. The experiments introduce evaluation metrics and methods for the two tasks and provide baselines for future work on the data.


Author(s):  
M Nordin A Rahman ◽  
Ahmad Fakhri Ab. Nasir ◽  
Nashriyah Mat ◽  
A Rasid Mamat

PLoS ONE ◽  
2017 ◽  
Vol 12 (2) ◽  
pp. e0170629 ◽  
Author(s):  
Marco Seeland ◽  
Michael Rzanny ◽  
Nedal Alaqraa ◽  
Jana Wäldchen ◽  
Patrick Mäder

Sign in / Sign up

Export Citation Format

Share Document