Gene engineering Division, National Institute of Agricultural
Sciences, RDA, Jeonju, Korea
ORCiD: [0000-0002-6097-147X of presenting author]!
Keywords: tomato, image, phenomics, TYLCV, Breeding
Tomato Yellow Leaf curl virus (TYLCV) is a destructive disease in
greenhouse tomatoes in South Korea. Detecting TYLCV symptoms in the
early seedling stage is a challenge for breeders. Three representative
symptoms of TYLCV are yellowing, curling, and stunting. In this study,
we developed an automated region of interest (ROI) extracting system for
precisely measuring stunt symptom. Plants grown for four weeks after
germination were used for imaging. Eighteen tomato varieties used in
this study were screened using PCR makers to determine whether they have
TYLCV resistance genes (Ty-1 and Ty-3 ) or not. TYLCV clone
was used for infection. Plant images were generated using a depth camera
and rotating optical measuring system. Plant canopy images were acquired
at 0, 120, and 240 degrees. Then plant canopy images were processed and
canopy convex-hull was measured using ImageJ program and house script.
73.6% of TYLCV infected plants showed reduced convex-hull area than
uninfected healthy plants. Average reduction rate of convex-hull area is
11.6 \(\pm\ 10.3\)% of uninfected healthy plants. In this study, we
developed automatic system for getting convex-hull area values from
tomato plant canopy images. In a further study, we will try to develop a
deep-learning model to classify between resistant and susceptible plants
to TYLCV based on stunting symptom.