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Fish Detection AI, sonar image-trained detection, counting, tracking models
The Fish Detection AI project aims to improve the efficiency of fish monitoring around marine energy facilities to comply with regulatory requirements. Despite advancements in computer vision, there is limited focus on sonar images, identifying small fish with unlabeled data, and methods for underwater fish monitoring for marine energy. A Faster R-CNN (Region-based Convolutional Neural Network) was developed using sonar images from Alaska Fish and Games to identify, track, and count fish in underwater environments. Supervised methods were used with Faster R-CNN to detect fish based on training using labeled data of fish. Customized filters were specifically applied to detect and count small fish when labeled datasets were unavailable. Unsupervised Domain Adaptation techniques were implemented to enable trained models to be applied to different unseen datasets, reducing the need for labeling datasets and training new models for various locations. Additionally, elastic shape analysis (ESA), hyper-image analysis, and various image preprocessing methods were explored to enhance fish detection. In this research we achieved: 1. Faster R-CNN for Sonar images - Applied Faster R-CNN reached > 0.85 average precision (AP) for large fish detection, providing robust results for higher-quality sonar images. - Integrated Norfair tracking to reduce double-counting of fish across video frames, enabling more accurate population estimates. 2. Small Fish Identification - Established customized filtering methods for small, often unlabeled fish in noisy acoustic images. This submission of data includes several sub-directories: - FryCounting: contains information on how to count small fish (i.e., fry) in the sonar image data - SG_aldi_addons: contains additions to the ALDI code (SG = Steven Gutstein, primary author) such as the trained models used in this experiment, which should match the models achieved when the training instructions are followed, and code for how to make the sonar images into movies - Summaries_Dir: contains information on how to set up the foundation to perform these experiments, such as installing all required packages and versions, and creating the PyTorch and ALDI environments These experiments boil down to a 2-part structure as described in the uploaded readme file: Part I: Installing and Using ALDI & Norfair Code - This is used for tracking and counting fish, and is a replication of the article that is linked, namely the Align and Distill (Aldi) work done by Justin Kay and others - This part relates to the Summaries_Dir subfolder, and the SG_aldi_addons sub-folder Part II: Installing and Using Fry Code - This is used to track and count smaller fish (aka fry) - This relates to the FryCounting sub-directory Also included here are links to the downloadable sonar data and the article that was replicated in this study.
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AFSC/RACE/GAP/McConnaughey: Fishpac Projects-2006- Navigation
공공데이터포털
The broad scope of the Essential Fish Habitat (EFH) mandate requires an efficient process for describing and mapping the habitat needs of federally managed species. For example, research indicates surficial sediments affect the distribution and abundance of many groundfish species, yet traditional sampling with grabs and cores is impractical over areas as large as the Bering Sea shelf. Acoustic tools are suitable for large-scale surveying and show great promise as a substitute for direct-sampling methods, but they have not been proven useful for EFH purposes.
Early Detection and Monitoring - Fish, Aquatic Invertebrates, Ichthyoplankton, and eDNA Metabarcoding Datasets and Reports
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U.S Fish and Wildlife Services (USFWS) Lower Great Lakes Fish and Wildlife Conservation Office (LGLFWCO) Aquatic Invasive Species (AIS) Early Detection and Monitoring (EDM) program began in 2012 following the onset of Great Lakes Restoration Initiative (GLRI) funding. This program is apart of a larger basin-wide Great Lakes AIS EDM effort by the USFWS. The goal of this program is to detect novel AIS species (fish and aquatic invertebrates) by sampling a diversity of habitats with a wide array of gear types. Sampling focuses on harbors, rivers and tributaries of the lower Great Lakes (Erie and Ontario) as determined by a risk-based prioritization framework for AIS in the Great Lakes. The program is composed of three components of AIS surveillance: juvenile/adult fish, ichthyoplankton (larval fish), and aquatic invertebrates (including crayfish). Sampling strategies and protocols are analyzed and designed to capture the maximum species richness at locations with the assumption that capturing an abundance of species, including singletons and doubletons, could lead to detecting rare novel AIS species if present. Protocols vary depending on the component of the program and descriptions can be found within the metadata of each dataset. This program is adaptive in nature and standardization, although important for comparisons, is not the primary intention of this AIS sampling strategy. Any significant AIS detections are reported to partners following an internal communications protocol.
EOP Acoustic tagging and monitorings of cultured and wild juvenile crimson jobfish (Pristipomoides filamentosus) in a nursery habitat
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Raw data from Vemco receivers that monitored the Kaneohe, Oahu nursery grounds while tagged juvenile snapper were released in 2006 (cultured) and 2007 (wild). Also included are raw temperature time series from thermographs mounted 5m above the bottom with the receiver.
AFSC/RACE/GAP/McConnaughey: Fishpac Projects-2012-Sonardyne
공공데이터포털
The broad scope of the Essential Fish Habitat (EFH) mandate requires an efficient process for describing and mapping the habitat needs of federally managed species. For example, research indicates surficial sediments affect the distribution and abundance of many groundfish species, yet traditional sampling with grabs and cores is impractical over areas as large as the Bering Sea shelf. Acoustic tools are suitable for large-scale surveying and show great promise as a substitute for direct-sampling methods, but they have not been proven useful for EFH purposes.
AFSC/RACE/GAP/McConnaughey: Fishpac Projects-2012-SonarWiz
공공데이터포털
The broad scope of the Essential Fish Habitat (EFH) mandate requires an efficient process for describing and mapping the habitat needs of federally managed species. For example, research indicates surficial sediments affect the distribution and abundance of many groundfish species, yet traditional sampling with grabs and cores is impractical over areas as large as the Bering Sea shelf. Acoustic tools are suitable for large-scale surveying and show great promise as a substitute for direct-sampling methods, but they have not been proven useful for EFH purposes.
AFSC/RACE/GAP/McConnaughey: Fishpac Projects-2006-QINSy-WGS84 UTM4 Meters
공공데이터포털
The broad scope of the Essential Fish Habitat (EFH) mandate requires an efficient process for describing and mapping the habitat needs of federally managed species. For example, research indicates surficial sediments affect the distribution and abundance of many groundfish species, yet traditional sampling with grabs and cores is impractical over areas as large as the Bering Sea shelf. Acoustic tools are suitable for large-scale surveying and show great promise as a substitute for direct-sampling methods, but they have not been proven useful for EFH purposes.
AFSC/RACE/GAP/McConnaughey: Fishpac Projects-2008-SCS Data
공공데이터포털
The broad scope of the Essential Fish Habitat (EFH) mandate requires an efficient process for describing and mapping the habitat needs of federally managed species. For example, research indicates surficial sediments affect the distribution and abundance of many groundfish species, yet traditional sampling with grabs and cores is impractical over areas as large as the Bering Sea shelf. Acoustic tools are suitable for large-scale surveying and show great promise as a substitute for direct-sampling methods, but they have not been proven useful for EFH purposes.
AFSC/RACE/GAP/McConnaughey: Fishpac Projects-2006-SVP
공공데이터포털
The broad scope of the Essential Fish Habitat (EFH) mandate requires an efficient process for describing and mapping the habitat needs of federally managed species. For example, research indicates surficial sediments affect the distribution and abundance of many groundfish species, yet traditional sampling with grabs and cores is impractical over areas as large as the Bering Sea shelf. Acoustic tools are suitable for large-scale surveying and show great promise as a substitute for direct-sampling methods, but they have not been proven useful for EFH purposes.
AFSC/RACE/GAP/McConnaughey: Fishpac Projects-2006-Sonardyne
공공데이터포털
The broad scope of the Essential Fish Habitat (EFH) mandate requires an efficient process for describing and mapping the habitat needs of federally managed species. For example, research indicates surficial sediments affect the distribution and abundance of many groundfish species, yet traditional sampling with grabs and cores is impractical over areas as large as the Bering Sea shelf. Acoustic tools are suitable for large-scale surveying and show great promise as a substitute for direct-sampling methods, but they have not been proven useful for EFH purposes.
AFSC/RACE/GAP/McConnaughey: Fishpac Projects-2006-GIS
공공데이터포털
The broad scope of the Essential Fish Habitat (EFH) mandate requires an efficient process for describing and mapping the habitat needs of federally managed species. For example, research indicates surficial sediments affect the distribution and abundance of many groundfish species, yet traditional sampling with grabs and cores is impractical over areas as large as the Bering Sea shelf. Acoustic tools are suitable for large-scale surveying and show great promise as a substitute for direct-sampling methods, but they have not been proven useful for EFH purposes.