Abstract

AbstractBackground and objectivesTo maintain the competitiveness of U.S. long‐grain rice in U.S. and foreign markets, having translucent whole milled grain is critical. An objective technique to detect grain chalk, opaque areas in the grain, will provide breeders and industry with an effective tool for developing low‐chalk varieties or agronomic practices that reduce chalk occurrence. Two instruments developed at the Center for Grain and Animal Health Research, U.S. Department of Agriculture‐Agricultural Research Service (USDA‐ARS), a single‐kernel near‐infrared (SKNIR) tube instrument and a silicon‐based light‐emitting diode (SiLED) high‐speed sorter, were compared with two commercially available imaging instruments, WinSEEDLE and SeedCount used for chalk quantification. Three 2‐way chalk classifications were defined for single kernels based on visual inspection: (a) <50% or ≥50% opacity or chalk (modified Grain Inspection, Packers & Stockyards Administration [GIPSA]), (b) <10% or ≥10% opacity (10% cutoff), and (c) 100% opacity or 100% translucent (MaxLevel).FindingsThe SKNIR method provided the best classification for the modified GIPSA definition with an 82.4% average correct classification (CC), that is, 89% and 76% for nonchalky and chalky kernels, respectively. The WinSEEDLE had the best classification for the 10% cutoff definition, with an 84% CC for nonchalky kernels and a 96% CC for chalky kernels. For the MaxLevel definition, average CCs of both the SKNIR and SiLED methods were similar, at 93% and 95%, respectively. The average CCs were lower for both the WinSEEDLE method and the SeedCount method at 14% and 58%, respectively. These low CC values are a result of using a threshold of 100% for chalky or nonchalky kernels, where a single misclassified pixel within the image will cause misclassification. Calibration models developed for both the SKNIR and SiLED methods indicate that their classifications were based mainly on spectral differences near the adsorption bands for starch, protein, and water content.ConclusionsAll of the instruments can be used to classify chalk, but their level of accuracy depends on how chalk is defined.Significance and noveltyThe SiLED has the capability to process seeds at a high rate, and the SKNIR has the potential to measure compositional traits in addition to chalk measurements.

Highlights

  • The occurrence of rice chalk, an opaque area in a rice grain, is a major concern in rice‐producing areas worldwide, as it negatively affects yield, appearance, milling, cooking, and palatability qualities

  • The objectives of this study were to compare the effectiveness of measuring rice chalk by two instruments developed by the USDA‐ARS (SKNIR and silicon‐based light‐emitting diode (SiLED)), both of which are based on spectral measurements in the visible and NIR regions

  • The model wavelengths of 1,581 nm for MaxLevel, 1,551 nm for modified Grain Inspection (GIPSA), and 1,596 nm in 10% cutoff corresponded to absorption bands for starch including 1,463 nm indicating the discrimination of amylose content (Pandiselvam, Thirupathi, & Vennila, 2016; Shenk, Workman, & Westerhaus, 1992; Williams & Norris, 2001)

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Summary

Introduction

The occurrence of rice chalk, an opaque area in a rice grain, is a major concern in rice‐producing areas worldwide, as it negatively affects yield, appearance, milling, cooking, and palatability qualities. Rice chalk is a visually observed characteristic that consumers and grain processors generally perceive as showing that the rice is of lower quality, which results in market rejection or a substantial price reduction of the rice (Bonifacio & Duff, 1992; Fitzgerald & Resurreccion, 2009). This is in addition to a reduced harvest yield and decreased milled rice recovery (Bautista, Siebenmorgen, & Counce, 2009; Xie et al, 2013; Zhao & Fitzgerald, 2013). Conclusions: All of the instruments can be used to classify chalk, but their level of accuracy depends on how chalk is defined

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