ShrimpView: A Versatile Dataset for Shrimp Detection and Recognition
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https://ieee-dataport.org/documents/shrimpview-versatile-dataset-shrimp-detection-and-recognition
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The "ShrimpView: A Versatile Dataset for Shrimp Detection and Recognition" is a meticulously curated collection of 10,000 samples (each with 11 attributes) designed to facilitate the training of deep learning models for shrimp detection and classification. Each sample in this dataset is associated with an image and accompanied by 11 categorical attributes. These attributes span a range of features including species type ("Pacific White Shrimp," "Tiger Prawn," "Ghost Shrimp"), life stage ("Larvae," "Juvenile," "Adult"), and environmental conditions ("Freshwater," "Saltwater," "Brackish Water"), among others. Additionally, the dataset incorporates variations in image orientation, background, and lighting conditions to enhance model generalizability. With resolutions ranging from 640x480 px to 1920x1080 px, the dataset is well-suited for both object detection and multi-class classification tasks. The variability in these attributes aims to improve the model's generalizability and robustness. For instance, the "Species" and "Life Stage" attributes can aid in multi-class classification, while "Color" and "Size" add complexity for object detection. "Orientation" and "Background" introduce viewpoint and environmental variance, respectively. "Lighting" conditions can simulate different capture scenarios, and "Resolution" offers scale variance. "Grouping" prepares the model for detecting multiple instances in a single frame, and "Habitat" ensures the model is trained for different water conditions. It aims to serve as a robust foundation for developing comprehensive machine learning solutions in the domain of aquatic species recognition. This rich, multi-dimensional dataset is thus ideal for training a robust deep learning model for comprehensive shrimp detection and classification. The computational costs involved in generating the dataset are listed as follows:Data Augmentation Cost: Caug=20 secondsCSV Generation Cost: Ccsv=1.1 secondsAttribute Randomization Cost: Cattr=1.1 secondsTotal Disk Space Needed: Dtotal=550 MBTotal Time Needed: CTotal=22.2 secondsTotal Time Needed with Parallelization: Ctotal, Cparallel=55.5 seconds (4 cores)
提供机构:
IEEE DataPort
创建时间:
2023-09-22



