RipSetCocoaCNCH12: Labeled Dataset for Ripeness Stage Detection, Semantic and Instance Segmentation of Cocoa Pods

IF 2.7 3区 物理与天体物理 Q2 PHYSICS, ATOMIC, MOLECULAR & CHEMICAL
Juan Felipe Restrepo-Arias, María Isabel Salinas-Agudelo, M. Hernández-Pérez, Alejandro Marulanda-Tobón, María Camila Giraldo-Carvajal
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引用次数: 0

Abstract

Fruit counting and ripeness detection are computer vision applications that have gained strength in recent years due to the advancement of new algorithms, especially those based on artificial neural networks (ANNs), better known as deep learning. In agriculture, those algorithms capable of fruit counting, including information about their ripeness, are mainly applied to make production forecasts or plan different activities such as fertilization or crop harvest. This paper presents the RipSetCocoaCNCH12 dataset of cocoa pods labeled at four different ripeness stages: stage 1 (0–2 months), stage 2 (2–4 months), stage 3 (4–6 months), and harvest stage (>6 months). An additional class was also included for pods aborted by plants in the early stage of development. A total of 4116 images were labeled to train algorithms that mainly perform semantic and instance segmentation. The labeling was carried out with CVAT (Computer Vision Annotation Tool). The dataset, therefore, includes labeling in two formats: COCO 1.0 and segmentation mask 1.1. The images were taken with different mobile devices (smartphones), in field conditions, during the harvest season at different times of the day, which could allow the algorithms to be trained with data that includes many variations in lighting, colors, textures, and sizes of the cocoa pods. As far as we know, this is the first openly available dataset for cocoa pod detection with semantic segmentation for five classes, 4116 images, and 7917 instances, comprising RGB images and two different formats for labels. With the publication of this dataset, we expect that researchers in smart farming, especially in cocoa cultivation, can benefit from the quantity and variety of images it contains.
RipSetCocoaCNCH12:用于可可荚成熟度阶段检测、语义和实例分割的标记数据集
水果计数和成熟度检测是计算机视觉应用,近年来由于新算法的进步,特别是基于人工神经网络(ANNs)的算法,即深度学习,得到了加强。在农业中,那些能够计数水果的算法,包括它们的成熟度信息,主要用于生产预测或计划不同的活动,如施肥或作物收获。本文介绍了RipSetCocoaCNCH12数据集,其中标记了四个不同成熟度阶段的可可荚:阶段1(0-2个月),阶段2(2 - 4个月),阶段3(4-6个月)和收获阶段(>6个月)。另外一类还包括在发育早期被植物流产的荚果。总共有4116张图像被标记,以训练主要执行语义和实例分割的算法。使用CVAT(计算机视觉标注工具)进行标注。因此,数据集包括两种格式的标记:COCO 1.0和分割掩码1.1。这些图像是用不同的移动设备(智能手机)在田野条件下,在收获季节的不同时间,在一天中拍摄的,这可以允许算法接受数据训练,包括光线、颜色、纹理和可可荚大小的许多变化。据我们所知,这是第一个公开可用的可可荚检测数据集,对5个类、4116张图像和7917个实例进行语义分割,包括RGB图像和两种不同的标签格式。随着该数据集的发布,我们希望智能农业的研究人员,特别是可可种植的研究人员,可以从它包含的数量和种类的图像中受益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Atomic Data and Nuclear Data Tables
Atomic Data and Nuclear Data Tables 物理-物理:核物理
CiteScore
4.50
自引率
11.10%
发文量
27
审稿时长
47 days
期刊介绍: Atomic Data and Nuclear Data Tables presents compilations of experimental and theoretical information in atomic physics, nuclear physics, and closely related fields. The journal is devoted to the publication of tables and graphs of general usefulness to researchers in both basic and applied areas. Extensive ... click here for full Aims & Scope Atomic Data and Nuclear Data Tables presents compilations of experimental and theoretical information in atomic physics, nuclear physics, and closely related fields. The journal is devoted to the publication of tables and graphs of general usefulness to researchers in both basic and applied areas. Extensive and comprehensive compilations of experimental and theoretical results are featured.
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