Xiaomin Lin, Vivek Mange, Arjun Suresh, Bernhard Neuberger, Aadi Palnitkar, Brendan Campbell, Alan Williams, Kleio Baxevani, Jeremy Mallette, Alhim Vera, Markus Vincze, Ioannis Rekleitis, Herbert G. Tanner, Yiannis Aloimonos
{"title":"ODYSSEE:边缘电子传感器系统产生的牡蛎探测结果","authors":"Xiaomin Lin, Vivek Mange, Arjun Suresh, Bernhard Neuberger, Aadi Palnitkar, Brendan Campbell, Alan Williams, Kleio Baxevani, Jeremy Mallette, Alhim Vera, Markus Vincze, Ioannis Rekleitis, Herbert G. Tanner, Yiannis Aloimonos","doi":"arxiv-2409.07003","DOIUrl":null,"url":null,"abstract":"Oysters are a keystone species in coastal ecosystems, offering significant\neconomic, environmental, and cultural benefits. However, current monitoring\nsystems are often destructive, typically involving dredging to physically\ncollect and count oysters. A nondestructive alternative is manual\nidentification from video footage collected by divers, which is time-consuming\nand labor-intensive with expert input. An alternative to human monitoring is the deployment of a system with trained\nobject detection models that performs real-time, on edge oyster detection in\nthe field. One such platform is the Aqua2 robot. Effective training of these\nmodels requires extensive high-quality data, which is difficult to obtain in\nmarine settings. To address these complications, we introduce a novel method\nthat leverages stable diffusion to generate high-quality synthetic data for the\nmarine domain. We exploit diffusion models to create photorealistic marine\nimagery, using ControlNet inputs to ensure consistency with the segmentation\nground-truth mask, the geometry of the scene, and the target domain of real\nunderwater images for oysters. The resulting dataset is used to train a\nYOLOv10-based vision model, achieving a state-of-the-art 0.657 mAP@50 for\noyster detection on the Aqua2 platform. The system we introduce not only\nimproves oyster habitat monitoring, but also paves the way to autonomous\nsurveillance for various tasks in marine contexts, improving aquaculture and\nconservation efforts.","PeriodicalId":501031,"journal":{"name":"arXiv - CS - Robotics","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2024-09-11","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"ODYSSEE: Oyster Detection Yielded by Sensor Systems on Edge Electronics\",\"authors\":\"Xiaomin Lin, Vivek Mange, Arjun Suresh, Bernhard Neuberger, Aadi Palnitkar, Brendan Campbell, Alan Williams, Kleio Baxevani, Jeremy Mallette, Alhim Vera, Markus Vincze, Ioannis Rekleitis, Herbert G. 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ODYSSEE: Oyster Detection Yielded by Sensor Systems on Edge Electronics
Oysters are a keystone species in coastal ecosystems, offering significant
economic, environmental, and cultural benefits. However, current monitoring
systems are often destructive, typically involving dredging to physically
collect and count oysters. A nondestructive alternative is manual
identification from video footage collected by divers, which is time-consuming
and labor-intensive with expert input. An alternative to human monitoring is the deployment of a system with trained
object detection models that performs real-time, on edge oyster detection in
the field. One such platform is the Aqua2 robot. Effective training of these
models requires extensive high-quality data, which is difficult to obtain in
marine settings. To address these complications, we introduce a novel method
that leverages stable diffusion to generate high-quality synthetic data for the
marine domain. We exploit diffusion models to create photorealistic marine
imagery, using ControlNet inputs to ensure consistency with the segmentation
ground-truth mask, the geometry of the scene, and the target domain of real
underwater images for oysters. The resulting dataset is used to train a
YOLOv10-based vision model, achieving a state-of-the-art 0.657 mAP@50 for
oyster detection on the Aqua2 platform. The system we introduce not only
improves oyster habitat monitoring, but also paves the way to autonomous
surveillance for various tasks in marine contexts, improving aquaculture and
conservation efforts.