2022
DOI: 10.1093/icesjms/fsac166
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Evaluating automated benthic fish detection under variable conditions

Abstract: Advances in imaging systems have facilitated the collection of high-volume imagery datasets in fisheries science. To alleviate the costs of sorting these datasets, automated image processing techniques are used. In this study, we investigate a machine learning-enabled imaging technique for automating individual fish detection from stereo image pairs of orange roughy (Hoplostethus atlanticus). We performed a set of object detection experiments to investigate how well a Single Shot Multi-Box Detector (SSD) model… Show more

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Cited by 6 publications
(7 citation statements)
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“…Many of the traditional problems marine scientists currently use imagery to address fall into one of three categories: image classification, object detection, or semantic segmentation. More complex tasks such as tracking (Katija et al, 2021;Irisson et al, 2022), functional trait analysis (Orenstein et al, 2022), pose estimation (Graving et al, 2019), and automated measurements (Fernandes et al, 2020) often rely on these more basic tasks as building blocks.…”
Section: Technical Considerationsmentioning
confidence: 99%
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“…Many of the traditional problems marine scientists currently use imagery to address fall into one of three categories: image classification, object detection, or semantic segmentation. More complex tasks such as tracking (Katija et al, 2021;Irisson et al, 2022), functional trait analysis (Orenstein et al, 2022), pose estimation (Graving et al, 2019), and automated measurements (Fernandes et al, 2020) often rely on these more basic tasks as building blocks.…”
Section: Technical Considerationsmentioning
confidence: 99%
“…A second common task involves detecting and spatially localizing objects of interest within images, a task known as object detection or instance segmentation. Separating instances of the same type of object (e.g., there are nine fish identified as Atlantic cod in this image) in a given image is often crucial if imagery is being used to estimate abundances (Moeller et al, 2018), and most object detection pipelines can also be trained to detect objects of many different classes, which is valuable for analyzing images that contain multiple objects of interest that belong to different classes (see Scoulding et al, 2022 for a discussion of limitations at high density).…”
Section: Technical Considerationsmentioning
confidence: 99%
“…A distribution shift occurs when the imagery on which an ML pipeline is trained differs in some systematic way from the imagery on which the pipeline is deployedthat is, the new imagery the ML method is being used to analyze. The term "distribution shift" refers to a generic set of differences that may occur between one set of images (the "in-domain" set) and another (the "out-of-domain" set), including things like differences in lighting, camera attributes, image scene statistics, background clutter, turbidity, and the relative abundances and appearances of different classes of objects (Taori et al 2020, Scoulding et al 2022, Wyatt et al 2022. This problem arises often in scientific sampling, because in this setting, the goal is often to extract data from one image set collected at a particular place and time, and to compare it to data from another image data set collected at some other place or time.…”
Section: Case Study: Performance On Object Detection and Classificati...mentioning
confidence: 99%
“…Separating instances of the same type of object (e.g., there are nine fish identified as Atlantic cod in this image) in a given image is often crucial if imagery is being used to estimate abundances (Moeller et al . 2018, but see Scoulding et al . 2022 for a discussion of limitations at high density), and most object detection pipelines can be trained to detect objects of many different classes, which is valuable for analyzing images that contain multiple objects of interest of different types (e.g., many distinct phytoplankton species or morphotypes in the same image, Irisson et al .…”
Section: Defining the Image Analysis Taskmentioning
confidence: 99%
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