Pistolas Evangelos, Kyratzopoulou Eleni, Malletzidou Lamprini, Nerantzis Evangelos, Kiourt Chairi, Kazakis Nikolaos
Athena - Research and innovation Center in Information, Communication and Knowledge Technologies, Xanthi 67100, Greece.
Data Brief. 2024 Sep 14;57:110941. doi: 10.1016/j.dib.2024.110941. eCollection 2024 Dec.
This CIDACC dataset was created to determine the cell population of microalga during cultivation. has diverse applications, including use as food supplement, biofuel production, and pollutant removal. High resolution images were collected using a microscope and annotated, focusing on computer vision and machine learning models creation for automatic cell detection, counting, size and geometry estimation. The dataset comprises 628 images, organized into hierarchical folders for easy access. Detailed segmentation masks and bounding boxes were generated using external tools enhancing the dataset's utility. The dataset's efficacy was demonstrated through preliminary experiments using deep learning architecture such as object detection and localization algorithms, as well as image segmentation algorithms, achieving high precision and accuracy. This dataset is a valuable tool for advancing computer vision applications in microalgae research and other related fields. The dataset is particularly challenging due to its dynamic nature and the complex correlations it presents across various application domains, including cell analysis in medical research. Its intricacies not only push the boundaries of current computer vision algorithms but also offer significant potential for advancements in diverse fields such as biomedical imaging, environmental monitoring, and biotechnological innovations.
这个CIDACC数据集是为了确定微藻培养过程中的细胞群体而创建的。它有多种应用,包括用作食品补充剂、生物燃料生产和污染物去除。使用显微镜收集并标注了高分辨率图像,重点是创建用于自动细胞检测、计数、大小和几何形状估计的计算机视觉和机器学习模型。该数据集包含628张图像,组织成层次文件夹以便于访问。使用外部工具生成了详细的分割掩码和边界框,增强了数据集的实用性。通过使用深度学习架构(如目标检测和定位算法以及图像分割算法)进行的初步实验证明了该数据集的有效性,实现了高精度和准确性。这个数据集是推进微藻研究及其他相关领域计算机视觉应用的宝贵工具。由于其动态性质以及在包括医学研究中的细胞分析在内的各种应用领域中呈现的复杂相关性,该数据集特别具有挑战性。其复杂性不仅推动了当前计算机视觉算法的边界,还为生物医学成像、环境监测和生物技术创新等不同领域的进步提供了巨大潜力。