Abstract

Wheat head detection can measure wheat traits such as head density and head characteristics. Standard wheat breeding largely relies on manual observation to detect wheat heads, yielding a tedious and inefficient procedure. The emergence of affordable camera platforms provides opportunities for deploying computer vision (CV) algorithms in wheat head detection, enabling automated measurements of wheat traits. Accurate wheat head detection, however, is challenging due to the variability of observation circumstances and the uncertainty of wheat head appearances. In this work, we propose a simple but effective idea—dynamic color transform (DCT)—for accurate wheat head detection. This idea is based on an observation that modifying the color channel of an input image can significantly alleviate false negatives and therefore improve detection results. DCT follows a linear color transform and can be easily implemented as a dynamic network. A key property of DCT is that the transform parameters are data-dependent such that illumination variations can be corrected adaptively. The DCT network can be incorporated into any existing object detectors. Experimental results on the Global Wheat Detection Dataset (GWHD) 2021 show that DCT can achieve notable improvements with negligible overhead parameters. In addition, DCT plays an important role in our solution participating in the Global Wheat Challenge (GWC) 2021, where our solution ranks the first on the initial public leaderboard, with an Average Domain Accuracy (ADA) of 0.821, and obtains the runner-up reward on the final private testing set, with an ADA of 0.695.

Highlights

  • Wheat is one of the principal cereal crops, playing an essential role in the human diet [1]

  • Our main contributions include the following: (i) We investigate the impact of the color channel and observe that modifying the color channel of the input image can improve detection results (ii) We introduce a dynamic color transform (DCT) network based on our observation and show that DCT can obtain notable improvements with negligible parameters overhead (iii) Our method reports state-of-the-art results on the Global Wheat Detection Dataset (GWHD) 2021 dataset and achieves the runner-up performance on the Global Wheat Challenge 2021

  • By incorporating our DCT network into an existing object detector, we observe a notable improvement in wheat head detection

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Summary

Introduction

Wheat is one of the principal cereal crops, playing an essential role in the human diet [1]. To ensure sustainable wheat crop production, breeders need to identify productive wheat varieties by constantly monitoring many wheat traits. Wheat head density, i.e., the number of wheat heads per unit area, is a key adaptation trait in the breeding process. A natural way to estimate wheat head density is to detect every wheat head in a sampled area. Wheat head density estimation still largely relies on human observation in the traditional breeding process, which is inefficient, tedious, and error-prone [6]. To meet the need of efficient measurement of wheat traits, it is required to develop machine-based techniques for automated wheat head detection

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