Abstract

Weed invasions pose a threat to agricultural productivity. Weed recognition and detection play an important role in controlling weeds. The challenging problem of weed detection is how to discriminate between crops and weeds with a similar morphology under natural field conditions such as occlusion, varying lighting conditions, and different growth stages. In this paper, we evaluate a novel algorithm, filtered Local Binary Patterns with contour masks and coefficient k (k-FLBPCM), for discriminating between morphologically similar crops and weeds, which shows significant advantages, in both model size and accuracy, over state-of-the-art deep convolutional neural network (CNN) models such as VGG-16, VGG-19, ResNet-50 and InceptionV3. The experimental results on the “bccr-segset” dataset in the laboratory testbed setting show that the accuracy of CNN models with fine-tuned hyper-parameters is slightly higher than the k-FLBPCM method, while the accuracy of the k-FLBPCM algorithm is higher than the CNN models (except for VGG-16) for the more realistic “fieldtrip_can_weeds” dataset collected from real-world agricultural fields. However, the CNN models require a large amount of labelled samples for the training process. We conducted another experiment based on training with crop images at mature stages and testing at early stages. The k-FLBPCM method outperformed the state-of-the-art CNN models in recognizing small leaf shapes at early growth stages, with error rates an order of magnitude lower than CNN models for canola–radish (crop–weed) discrimination using a subset extracted from the “bccr-segset” dataset, and for the “mixed-plants” dataset. Moreover, the real-time weed–plant discrimination time attained with the k-FLBPCM algorithm is approximately 0.223 ms per image for the laboratory dataset and 0.346 ms per image for the field dataset, and this is an order of magnitude faster than that of CNN models.

Highlights

  • Precision agriculture plays an indispensable role in increasing the productivity of agriculture, food security and sustainability, and reducing the detrimental impacts on the environment

  • We have compared the performances of selected Convolutional Neural Network (CNN) models (VGG-16, Visual Geometry Group (VGG)-19, ResNet-50 and Inception-V3 models) with the k-FLBPCM algorithm, in identifying crop and weed species of similar morphologies

  • For effective feature learning, these convolutional neural network (CNN) models require a huge number of plant images to be collected at each of the various growth stages

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Summary

Introduction

Precision agriculture plays an indispensable role in increasing the productivity of agriculture, food security and sustainability, and reducing the detrimental impacts on the environment. Identifying weeds at early crop growth stages brings many benefits for weed management prior to crop damage This results in a reduction in herbicide usage, minimizes the negative impacts on the environment, improves grower profitability and maintains high crop quality [1].

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