Abstract

The rapid development of vision sensor based on artificial intelligence (AI) is reforming industries and making our world smarter. Among these trends, it is of great significance to adapt AI technologies into the intelligent agricultural management. In smart agricultural aviation spraying, the droplets’ distribution and deposition are important indexes for estimating effectiveness in plant protection process. However, conventional approaches are problematic, they lack adaptivity to environmental changes, and consumes non-reusable test materials. One example is that the machine vision algorithms they employ can’t guarantee that the division of adhesive droplets thereby disabling the accurate measurement of critical parameters. To alleviate these problems, we put forward an intelligent visual droplet detection node which can adapt to the environment illumination change. Then, we propose a modified marker controllable watershed segmentation algorithm to segment those adhesive droplets, and calculate their characteristic parameters on the basis of the segmentation results, including number, coverage, coverage density, etc. Finally, we use the intelligent node to detect droplets, and then expound the situation that the droplet region is effectively segmented and marked. The intelligent node has better adaptability and robustness even under the condition of illumination changing. The large-scale distributed detection result indicates that our approach has good consistency with the non-recyclable water-sensitive paper approach. Our approach provides an intelligent and environmental friendly way of tests for spraying techniques, especially for plant protection with Unmanned Aerial Vehicles.

Highlights

  • It is known that there is a momentum in the new technological revolution and the new industrial revolution

  • We design an intelligent vision sensor node that can adapt to the changes of light intensity in the environment, enabling rapid collection of large-scale droplets deposition parameter

  • We make use of the marker-controlled watershed segmentation to separate the adhesive droplets in the image, and each droplets area is successfully segmented and marked

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Summary

Introduction

It is known that there is a momentum in the new technological revolution and the new industrial revolution. We believe that the new era of AI, which is characterized by ubiquitous networks, data-drivenness, shared services, cross-border integration, automatic intelligence, and mass innovation, is coming soon. Among these characteristics, machine vision is a branch of the rapid development of AI, which is based on vision sensor systems. Vision sensor based on AI is gradually changing many aspects of human life and making our world smarter and smarter. Among these trends, improving the intelligent management of agriculture is of great significance. In order to avoid the drawbacks of the traditional approaches such as high labor intensity and low efficiency, the technologies of agricultural aviation represented by the Sensors 2019, 19, 933; doi:10.3390/s19040933 www.mdpi.com/journal/sensors

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