Abstract

The tassel of the maize plant is responsible for the production and dispersal of pollen for subsequent capture by the silk (stigma) and fertilization of the ovules. Both the amount and timing of pollen shed are physiological traits that impact the production of a hybrid seed. This study describes an automated end-to-end pipeline that combines deep learning and image processing approaches to extract tassel flowering patterns from time-lapse camera images of plants grown under field conditions. Inbred lines from the SAM and NAM diversity panels were grown at the Curtiss farm at Iowa State University, Ames, IA, during the summer of 2016. Using a set of around 500 pole-mounted cameras installed in the field, images of plants were captured every 10 minutes of daylight hours over a three-week period. Extracting data from imaging performed under field conditions is challenging due to variabilities in weather, illumination, and the morphological diversity of tassels. To address these issues, deep learning algorithms were used for tassel detection, classification, and segmentation. Image processing approaches were then used to crop the main spike of the tassel to track reproductive development. The results demonstrated that deep learning with well-labeled data is a powerful tool for detecting, classifying, and segmenting tassels. Our sequential workflow exhibited the following metrics: mAP for tassel detection was 0.91, F1 score obtained for tassel classification was 0.93, and accuracy of semantic segmentation in creating a binary image from the RGB tassel images was 0.95. This workflow was used to determine spatiotemporal variations in the thickness of the main spike—which serves as a proxy for anthesis progression.

Highlights

  • Flowering time in plants is geographically adapted

  • We report the model accuracy and mean intersection over union that quantify the performance of the trained model works on the testing dataset [44]. mIOU is the average of intersection over union

  • We show that a workflow comprising several deep learning and image processing methods provides a robust end-toend pipeline for this purpose

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Summary

Introduction

Flowering time in plants is geographically adapted. After a plant has been introduced into a new environment, flowering time can vary greatly [1, 2]. For field crops such as maize, date of flowering is crucial for yield. Altering reproduction time to achieve better adaptation to local environments and different climate conditions has become a major task in plant breeding. Breeders in the corn-planting regions of the North Central United States have found late maturity to be associated with higher yield, overdelayed maturity might lead to yield loss caused by frost in early autumn [3, 4]. Maximum yields are typically achieved when the latest maturing hybrids that still mature prior to frost are deployed

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