2022
DOI: 10.3389/fpls.2022.861534
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Leaf and Stem-Based Dew Detection Algorithm via Multi-Convolutional Edge Detection Networks

Abstract: During the process of drought and rehydration, dew can promote the rapid activation of photosynthetic activity and delay the wilting time of plant leaves and stems. It is clear that the amount of dew will affect the growth of plants. However, limited research is being done to detect and measure the amount of dew. Therefore, in this study, a statistical method for measuring the amount of dew based on computer vision processing was developed. In our framework, dewdrops can be accurately measured by isolating the… Show more

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