论文标题
自动检测视频中鱼类行为的运动轨道
Movement Tracks for the Automatic Detection of Fish Behavior in Videos
论文作者
论文摘要
预计全球变暖将对海洋生态系统产生深远的影响。鱼类行为是这种海洋环境变化的重要指标。因此,视频中关键鱼类行为的自动识别代表了海洋研究人员急需的工具,使他们能够研究与气候变化相关的现象。我们提供了水下视频中的黑貂鱼(肛门烟丝)惊吓行为的数据集,并研究了对其行为检测的深度学习(DL)方法的使用。我们提出的检测系统使用基于DL的框架确定鱼类实例,确定轨迹轨迹,得出新颖的行为特异性特征,并采用长期的短期记忆(LSTM)网络来识别SableFish中的惊吓行为。通过将其与基于DL的最新视频事件检测器进行比较来研究其性能。
Global warming is predicted to profoundly impact ocean ecosystems. Fish behavior is an important indicator of changes in such marine environments. Thus, the automatic identification of key fish behavior in videos represents a much needed tool for marine researchers, enabling them to study climate change-related phenomena. We offer a dataset of sablefish (Anoplopoma fimbria) startle behaviors in underwater videos, and investigate the use of deep learning (DL) methods for behavior detection on it. Our proposed detection system identifies fish instances using DL-based frameworks, determines trajectory tracks, derives novel behavior-specific features, and employs Long Short-Term Memory (LSTM) networks to identify startle behavior in sablefish. Its performance is studied by comparing it with a state-of-the-art DL-based video event detector.