Context-Driven Detection of Invertebrate Species in Deep-Sea Video

被引:0
作者
R. Austin McEver
Bowen Zhang
Connor Levenson
A S M Iftekhar
B. S. Manjunath
机构
[1] University of California,
来源
International Journal of Computer Vision | 2023年 / 131卷
关键词
Context driven; Substrate classification; Deep sea; Invertebrate classification; Underwater; Video dataset;
D O I
暂无
中图分类号
学科分类号
摘要
Each year, underwater remotely operated vehicles (ROVs) collect thousands of hours of video of unexplored ocean habitats revealing a plethora of information regarding biodiversity on Earth. However, fully utilizing this information remains a challenge as proper annotations and analysis require trained scientists’ time, which is both limited and costly. To this end, we present a Dataset for Underwater Substrate and Invertebrate Analysis (DUSIA), a benchmark suite and growing large-scale dataset to train, validate, and test methods for temporally localizing four underwater substrates as well as temporally and spatially localizing 59 underwater invertebrate species. DUSIA currently includes over ten hours of footage across 25 videos captured in 1080p at 30 fps by an ROV following pre-planned transects across the ocean floor near the Channel Islands of California. Each video includes annotations indicating the start and end times of substrates across the video in addition to counts of species of interest. Some frames are annotated with precise bounding box locations for invertebrate species of interest, as seen in Fig. 1. To our knowledge, DUSIA is the first dataset of its kind for deep sea exploration, with video from a moving camera, that includes substrate annotations and invertebrate species that are present at significant depths where sunlight does not penetrate. Additionally, we present the novel context-driven object detector (CDD) where we use explicit substrate classification to influence an object detection network to simultaneously predict a substrate and species class influenced by that substrate. We also present a method for improving training on partially annotated bounding box frames. Finally, we offer a baseline method for automating the counting of invertebrate species of interest.
引用
收藏
页码:1367 / 1388
页数:21
相关论文
共 101 条
  • [1] Beijbom O(2016)Improving automated annotation of benthic survey images using wide-band fluorescence Scientific Reports 6 1-11
  • [2] Treibitz T(2014)A research tool for long-term and continuous analysis of fish assemblage in coral-reefs using underwater camera footage Ecological Informatics 23 83-97
  • [3] Kline DI(2020)Ecological variables for developing a global deep-ocean monitoring and conservation strategy Nature Ecology & Evolution 4 181-192
  • [4] Eyal G(2020)Automating the analysis of fish abundance using object detection: Optimizing animal ecology with deep learning Frontiers in Marine Science 7 429-24
  • [5] Khen A(2015)The ROV 3D Project: Deep-sea underwater survey using photogrammetry: Applications for underwater archaeology Journal on Computing and Cultural Heritage (JOCCH) 8 1-136
  • [6] Neal B(2015)The pascal visual object classes challenge: A retrospective International Journal of Computer Vision 111 98-15
  • [7] Kriegman D(2019)A review of gorgonian coral species (Cnidaria, Octocorallia, Alcyonacea) held in the Santa Barbara Museum of Natural History research collection: Focus on species from Scleraxonia, Holaxonia, Calcaxonia—Part III: Suborder Holaxonia continued, and suborder Calcaxonia ZooKeys 860 183-14
  • [8] Boom BJ(2021)Foids: Bio-inspired fish simulation for generating synthetic datasets ACM Transactions on Graphics (TOG) 40 1-12
  • [9] He J(2022)Fathomnet: A global image database for enabling artificial intelligence in the ocean Scientific Reports 12 1-8037
  • [10] Palazzo S(2020)Gear-induced concept drift in marine images and its effect on deep learning classification Frontiers in Marine Science 7 506-585