Enhanced detection algorithm for apple bruises using structured light imaging

IF 8.2 Q1 AGRICULTURE, MULTIDISCIPLINARY Artificial Intelligence in Agriculture Pub Date : 2023-12-13 DOI:10.1016/j.aiia.2023.12.001
Haojie Zhu , Lingling Yang , Yu Wang , Yuwei Wang , Wenhui Hou , Yuan Rao , Lu Liu
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Abstract

Bruising reduces the edibility and marketability of fresh apples, inevitably causing economic losses for the apple industry. However, bruises lack obvious visual symptoms, which makes it challenging to detect them using imaging techniques with uniform or diffuse illumination. This study employed the structured light imaging (SLI) technique to detect apple bruises. First, the grayscale reflection images were captured under phase-shifted sinusoidal illumination at three different wavelengths (600, 650, and 700 nm) and six different spatial frequencies (0.05, 0.10, 0.15, 0.20, 0.25, and 0.30 cycles mm−1). Next, the grayscale reflectance images were demodulated to produce direct component (DC) images representing uniform diffuse illumination and amplitude component (AC) images revealing bruises. Then, by quantifying the contrast between bruised regions and sound regions in all AC images, it was found that bruises exhibited the optimal contrast when subjected to sinusoidal illumination at a wavelength of 700 nm and a spatial frequency of 0.25 mm−1. In the AC image with optimal contrast, the developed h-domes segmentation algorithm to accurately segment the location and range of the bruised regions. Moreover, the algorithm successfully accomplished the task of segmenting central bruised regions while addressing the challenge of segmenting edge bruised regions complicated by vignetting. The average Intersection over Union (IoU) values for the three types of bruises were 0.9422, 0.9231, and 0.9183, respectively. This result demonstrated that the combination of SLI and the h-domes segmentation algorithm was a viable approach for the effective detection of fresh apple bruises.

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利用结构光成像技术增强苹果伤痕检测算法
瘀伤会降低新鲜苹果的可食性和适销性,不可避免地会给苹果产业造成经济损失。然而,瘀伤缺乏明显的视觉症状,因此使用均匀或漫射光成像技术检测瘀伤具有挑战性。本研究采用结构光成像(SLI)技术检测苹果淤伤。首先,在三种不同波长(600、650 和 700 nm)和六种不同空间频率(0.05、0.10、0.15、0.20、0.25 和 0.30 周期 mm-1)的相移正弦波照明下采集灰度反射图像。然后,对灰度反射图像进行解调,生成代表均匀漫射光的直接分量(DC)图像和显示瘀伤的振幅分量(AC)图像。然后,通过量化所有 AC 图像中瘀伤区域和健全区域的对比度,发现在波长为 700 nm、空间频率为 0.25 mm-1 的正弦波照明下,瘀伤显示出最佳对比度。在对比度最佳的交流图像中,所开发的 h-domes 分割算法能准确分割出瘀伤区域的位置和范围。此外,该算法还成功地完成了分割中心淤血区域的任务,同时解决了分割边缘淤血区域的难题。三种瘀伤的平均联合交叉(IoU)值分别为 0.9422、0.9231 和 0.9183。这一结果表明,结合 SLI 和 h-domes 分割算法是有效检测新鲜苹果淤伤的可行方法。
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来源期刊
Artificial Intelligence in Agriculture
Artificial Intelligence in Agriculture Engineering-Engineering (miscellaneous)
CiteScore
21.60
自引率
0.00%
发文量
18
审稿时长
12 weeks
期刊最新文献
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