Tecnologico de Monterrey, Institute of Advanced Materials for Sustainable Manufacturing, Av. Gral Ramón Corona No 2514, Colonia Nuevo México, Zapopan 45201, Jalisco, Mexico.
Tecnologico de Monterrey, Escuela de Ingeniería y Ciencias, Av. Gral Ramón Corona No 2514, Colonia Nuevo México, Zapopan 45201, Jalisco, Mexico.
Sensors (Basel). 2023 Nov 30;23(23):9543. doi: 10.3390/s23239543.
Berry production is increasing worldwide each year; however, high production leads to labor shortages and an increase in wasted fruit during harvest seasons. This problem opened new research opportunities in computer vision as one main challenge to address is the uncontrolled light conditions in greenhouses and open fields. The high light variations between zones can lead to underexposure of the regions of interest, making it difficult to classify between vegetation, ripe, and unripe blackberries due to their black color. Therefore, the aim of this work is to automate the process of classifying the ripeness stages of blackberries in normal and low-light conditions by exploring the use of image fusion methods to improve the quality of the input image before the inference process. The proposed algorithm adds information from three sources: visible, an improved version of the visible, and a sensor that captures images in the near-infrared spectra, obtaining a mean F1 score of 0.909±0.074 and 0.962±0.028 in underexposed images, without and with model fine-tuning, respectively, which in some cases is an increase of up to 12% in the classification rates. Furthermore, the analysis of the fusion metrics showed that the method could be used in outdoor images to enhance their quality; the weighted fusion helps to improve only underexposed vegetation, improving the contrast of objects in the image without significant changes in saturation and colorfulness.
浆果的产量在全球范围内逐年增加;然而,高产量导致劳动力短缺,在收获季节浪费的水果也增多。这个问题为计算机视觉领域的研究提供了新的机会,因为主要的挑战之一是温室和开阔田地中不受控制的光照条件。不同区域之间的高光变化会导致感兴趣区域曝光不足,由于其黑色,因此很难区分植被、成熟和未成熟的黑莓。因此,这项工作的目的是通过探索使用图像融合方法来改善推理过程之前输入图像的质量,从而实现正常和低光照条件下黑莓成熟度阶段的分类过程自动化。所提出的算法从三个来源添加信息:可见光、改进的可见光版本和捕获近红外光谱图像的传感器,在曝光不足的图像中分别获得了 0.909±0.074 和 0.962±0.028 的平均 F1 分数,无需和带有模型微调,在某些情况下,分类率提高了高达 12%。此外,融合指标的分析表明,该方法可用于户外图像以提高其质量;加权融合有助于仅改善曝光不足的植被,改善图像中物体的对比度,而不会对饱和度和色彩产生明显变化。