vine nutrition: a diagnostic smartphone app for …...2019/07/07 · vine nutrition: a diagnostic...
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The National Wine and Grape Industry Centre is an alliance between Charles Sturt University, the NSW Department of Primary Industries (DPI) and the NSW Wine Industry Association www.csu.edu.au/nwgic
Vine Nutrition: A Diagnostic Smartphone App for Vine Nutritional Disorders
Baby T 1, Holzapfel BP1,2, Oczkowski A1, Rahaman DMM1, Paul M1,3, Zheng L1,4, Schmidtke LM1, Walker RR1,5, Rogiers SY1,2*
*Corresponding author: suzy.rogiers@dpi.nsw.gov.au 1 National Wine and Grape Industry Centre, Charles Sturt University, Wagga Wagga NSW, Australia
2 NSW Department of Primary Industries, Wagga Wagga NSW, Australia
3 School of Computing and Mathematics, Charles Sturt University, Bathurst NSW, Australia
4 School of Computing and Mathematics, Charles Sturt University, Wagga Wagga NSW, Australia
5 CSIRO Agriculture and Food, Waite Campus, Adelaide SA, Australia
IntroductionOptimising vine nutrition is one of the key vineyard management aspects determining vine
growth, crop yield, berry composition, and wine quality. Nutritional requirements can vary
between vineyards due to the influence of soil type, climate, vine age, crop removal, variety,
rootstock, cover crop and desired wine quality. A rapid diagnostic tool for assessing vine
nutritional disorders is vital for grape growers and vineyard managers. There are
smartphone Apps available that provide diagnostic information on plant nutrient deficiency
and toxicity symptoms, however, they are not specific to viticulture. Even though there are
several grapevine fact sheets, handbooks, field manuals, and an online tool the information
does not detail the progression of the symptoms, does not take into account leaf age and
usually does not provide information specific to red or white varieties. The current project
aims to develop a smartphone App to capture and analyse images of vine leaves so as to
rapidly and conveniently assess nutritional disorders of grapevines with minimal cost.
Method
2. Machine learning and image analysis
The basic steps for vine nutritional disorder detection and classification using image
processing are shown in Figure 2. RGB images of healthy and symptomatic leaves were
used for machine learning and image analysis. In most cases a certain portion of the image
is affected. Therefore, a region of interest (ROI) for nutritional disorder detection is cropped
and processed for feature extraction. The feature extraction plays an important role in
nutritional disorder identification. Using image analysis features (e.g., texture, smoothness,
contrast, salience and shape) and customised machine learning (i.e., support vector
machine (SVM)) techniques, intelligent algorithms were created to identify specific
deficiency and toxicity symptoms.
After extraction, the features were given as input of the SVM for training purpose as shown
in Figure 3. Then, for the testing purpose, features were extracted from the testing images
and given as input of the SVM. The predicted model built by the SVM can classify the leaf
as healthy or unhealthy.
For training purposes, we extracted features from 40 images. Then, we tested the
accuracy of the proposed technique on 145 images. The accuracy of the proposed
technique is almost 96%.
Give grower immediate info on the cause of the grapevine disorder and provide links to resources on how to address the problem
Classify leaf as healthy or unhealthy
Extract features of the cropped image
Crop image to region of interest
Acquire image
Figure 2: Basic steps for grapevine nutritional disorders detection.
Figure 1. Potted vines grown in washed sand with specific nutrient formulations
3. App development
We have developed an Android Mobile Application to demonstrate these disease recognition
algorithms and show how they can be applied. The Application is aimed at Android version 9.0
and requires a minimum Android version of 4.0.3. It uses open source software library OpenCV
to help implement the required machine learning algorithms.
The application is designed to have the following functionality:
• Acquire/label leaf images for analysis
• Provide information about relevant leaf/vine disorders
• Analyse a leaf segment with an SVM algorithm to detect whether the leaf is healthy or not
1. Development of Nutrient deficiency/toxicity symptoms
Nutrient deficiency/toxicity symptoms were created in potted grapevines grown in washed
sand medium, for both red and white varieties (Figure 1). RGB (red, green, and blue)
images of old and young leaves were taken weekly to track progression of symptoms.
Nutrient analysis of petioles were matched with symptoms severity.
Contacts:Tintu Baby, NWGIC/Charles Sturt University, Work email: tbaby@csu.edu.au, Personal email: tintubaby@rediffmail.com Phone: +61 412671778
ConclusionsWe were able to develop the first version of the mobile App for the identification of nutritional
disorders of grapevines. The experimental results show that image analysis and the machine
learning approach can be applied to the identification of nutritional disorders.
Figure 3: Classification algorithm.
Figure 4. Basic features of the App
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