Abstract

Inspection of rice seeds is a crucial task for plant nurseries and farmers since it ensures seed quality when growing seedlings. Conventionally, this process is performed by expert inspectors who manually screen large samples of rice seeds to identify their species and assess the cleanness of the batch. In the quest to automate the screening process through machine vision, a variety of approaches utilise appearance-based features extracted from RGB images while others utilise the spectral information acquired using Hyperspectral Imaging (HSI) systems. Most of the literature on this topic benchmarks the performance of new discrimination models using only a small number of species. Hence, it is unclear whether or not model performance variance confirms the effectiveness of proposed algorithms and features, or if it can be simply attributed to the inter-class/intra-class variations of the dataset itself. In this paper, a novel method to automatically screen and classify rice seed samples is proposed using a combination of spatial and spectral features, extracted from high resolution RGB and hyperspectral images. The proposed system is evaluated using a large dataset of 8,640 rice seeds sampled from a variety of 90 different species. The dataset is made publicly available to facilitate robust comparison and benchmarking of other existing and newly proposed techniques going forward. The proposed algorithm is evaluated on this large dataset and the experimental results show the effectiveness of the algorithm to eliminate impure species by combining spatial features extracted from high spatial resolution images and spectral features from hyperspectral data cubes.

Highlights

  • Inspecting rice (Oryza sativa) seed variety is a critical procedure for quality assessment in the arable sector [1]–[3]

  • The first and second scenarios aim to show the effectiveness of using spatial and spectral features extracted from a high resolution RGB image fused with Hyperspectral Imaging (HSI) data for rice seed classification

  • This experiment shows that, in line with state-of-the-art techniques for rice seed classification, very good results and elimination of impure species from rice seed samples can be achieved by taking advantage of spatial features from high spatial resolution images and combining them with spectral features from hyperspectral data cube

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Summary

Introduction

Inspecting rice (Oryza sativa) seed variety is a critical procedure for quality assessment in the arable sector [1]–[3]. These centres have strict and challenging requirements to identify and confirm/authorise new rice accessions while protecting existing rice varieties with high confidence To fulfil such strict requirements, seedling propagation stations and plant protection centres, often utilise conventional methods that rely on extracting a sample of rice seeds from a batch and using human visual inspectors to perform manual screening. In this analysis, inspectors accept or reject grains based on their appearance by analysing features such as: shape, length, width and colour. Automation of the inspection process would permit increased

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