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Using computer vision for analysis of plant growth condition: what to consider? Hans Jørgen Andersen Computer Vision and Media Technology laboratory Aalborg.

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Presentation on theme: "Using computer vision for analysis of plant growth condition: what to consider? Hans Jørgen Andersen Computer Vision and Media Technology laboratory Aalborg."— Presentation transcript:

1 Using computer vision for analysis of plant growth condition: what to consider? Hans Jørgen Andersen Computer Vision and Media Technology laboratory Aalborg University

2 Background ► Lower prices of cameras opens new possibilities for sensor development ► Cameras – Computer Vision – used in industry normally takes place in a controlled environment ► Within agriculture this is often not feasible

3 Problem ► If the surrounding environment for image acquisition cannot be controlled Then the computer vision system has to adjust to the environment

4 Outdoor Images of Wheat Plants Sunshine, unclouded. Sunshine, clouded. Skylight, clouded.Skylight.

5 If Spectra of Light Source Changes Spectra of Reflected Light Changes Spectral Variation of the Illumination

6 Light Sources ► Outdoor Condition poses the problem of Two Illumination sources  The Sun and  The Sky Sunlit Sky light How can you analysis the green color of the vegetation ?

7 Characteristic of Reflections ► Sunlit condition may pose two reflection components:  Highlight, i.e. the color of the sun / light source  Body, i.e. the color of the plant / object Plastic cup With HighlightPure Body reflection

8 Outdoor Image Formation Light Sources Object Plant Transmittance Absorption Reflectance Observer Camera Ambient Point Uniform

9 Modeling of Daylight Black Body T, Kelvin Black Body spectra Daylight may be modelled as a Black Body Correlated Colour Temperature, CCT Daylight model spectra

10 Segmentation

11 Classifying Reflections ► Reflections from Coffee classified into Body and Highlight Components Probability of Body Reflection

12 Use within Gap Fraction Estimation Original Image Classifying each pixel as Soil (”gap”) = 0, Plant = 1

13 Multi - Spectral Images ► 470-720 nm, 26 bands

14 Modeling Spectra ► Endmember Spectra Known (measured)

15 Classifying Reflections ► First-order body scattering Vegetation Soil

16 Classifying Reflections (2) Specular reflectionVegetation - Vegetation Vegetation - SoilSoil - Soil

17 Conclusion ► Modeling the Image Formation Process:  Is valuable for Robust segmentation Analysis of vegetation growth status Assessment of various reflection components

18 Perspectives ► Modeling of vegetation


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