Abstract

Precise in-season corn grain yield estimates enable farmers to make real-time accurate harvest and grain marketing decisions minimizing possible losses of profitability. A well developed corn ear can have up to 800 kernels, but manually counting the kernels on an ear of corn is labor-intensive, time consuming and prone to human error. From an algorithmic perspective, the detection of the kernels from a single corn ear image is challenging due to the large number of kernels at different angles and very small distance among the kernels. In this paper, we propose a kernel detection and counting method based on a sliding window approach. The proposed method detects and counts all corn kernels in a single corn ear image taken in uncontrolled lighting conditions. The sliding window approach uses a convolutional neural network (CNN) for kernel detection. Then, a non-maximum suppression (NMS) is applied to remove overlapping detections. Finally, windows that are classified as kernel are passed to another CNN regression model for finding the coordinates of the center of kernel image patches. Our experiments indicate that the proposed method can successfully detect the corn kernels with a low detection error and is also able to detect kernels on a batch of corn ears positioned at different angles.

Highlights

  • Commercial corn (Zea mays L.) is processed into numerous food and industrial products and it is widely known as one of the world’s most important grain crops

  • We have provided an overview of image processing, machine learning, and deep learning in various agricultural tasks, as such we turn our attention to the focus of this paper, namely, work that has been completed in counting corn kernels

  • They count the number of kernels on the one side and double it to approximately find the total number of corn kernels on a corn ear

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Summary

Introduction

Commercial corn (Zea mays L.) is processed into numerous food and industrial products and it is widely known as one of the world’s most important grain crops. 40% of corn is used for ethanol [4] and nearly 49.0% is used to feed animals (pigs, cows, cattle, etc.) [5]. The direct use of corn for food worldwide exceeds 150 million tons/year [6]. The importance of corn cannot be understated, and due to the world’s reliance on corn it is imperative that we work to maximize the yield of each ear of corn

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