4.7 Article

Towards Automated Ethogramming: Cognitively-Inspired Event Segmentation for Streaming Wildlife Video Monitoring

期刊

INTERNATIONAL JOURNAL OF COMPUTER VISION
卷 131, 期 9, 页码 2267-2297

出版社

SPRINGER
DOI: 10.1007/s11263-023-01781-2

关键词

Spatio-Temporal Event Segmentation; Spatial Object Localization; Streaming Input; Automated Ethogramming

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Researchers propose a self-supervised perceptual prediction framework to solve the problem of temporal event segmentation by building a stable representation of event-related objects. The approach utilizes LSTM predictions of high-level features and an attention mechanism to filter input features before prediction. The self-learned attention maps effectively localize the object. Experimental results show significant performance improvement in wildlife video monitoring.
Advances in visual perceptual tasks have been mainly driven by the amount, and types, of annotations of large-scale datasets. Researchers have focused on fully-supervised settings to train models using offline epoch-based schemes. Despite the evident advancements, limitations and cost of manually annotated datasets have hindered further development for event perceptual tasks, such as detection and localization of objects and events in videos. The problem is more apparent in zoological applications due to the scarcity of annotations and length of videos-most videos are atmost ten minutes long. Inspired by cognitive theories, we present a self-supervised perceptual prediction framework to tackle the problem of temporal event segmentation by building a stable representation of event-related objects. The approach is simple but effective. We rely on LSTM predictions of highlevel features computed by a standard deep learning backbone. For spatial segmentation, the stable representation of the object is used by an attention mechanism to filter the input features before the prediction step. The self-learned attention maps effectively localize the object as a side effect of perceptual prediction. We demonstrate our approach on long videos from continuous wildlife video monitoring, spanning multiple days at 25 FPS. We aim to facilitate automated ethogramming by detecting and localizing events without the need for labels. Our approach is trained in an online manner on streaming input and requires only a single pass through the video, with no separate training set. Given the lack of long and realistic (includes real-world challenges) datasets, we introduce a new wildlife video dataset-nest monitoring of the Kagu (a flightless bird from New Caledonia)-to benchmark our approach. Our dataset features a video from 10 days (over 23 million frames) of continuous monitoring of the Kagu in its natural habitat. We annotate every frame with bounding boxes and event labels. Additionally, each frame is annotated with time-of-day and illumination conditions. Wewill make the dataset, which is the first of its kind, and the code available to the research community. We find that the approach significantly outperforms other selfsupervised, traditional (e.g., Optical Flow, Background Subtraction) and NN-based (e.g., PA-DPC, DINO, iBOT), baselines and performs on par with supervised boundary detection approaches (i.e., PC). At a recall rate of 80%, our best performing model detects one false positive activity every 50min of training. On average, we at least double the performance of selfsupervised approaches for spatial segmentation. Additionally, we show that our approach is robust to various environmental conditions (e.g., moving shadows). We also benchmark the framework on other datasets (i.e., Kinetics-GEBD, TAPOS) from different domains to demonstrate its generalizability. The data and code are available on our project page: https://aix.eng.usf. edu/ research_automated_ethogramming.html

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