A Benchmark Database for Animal Re-Identification and Tracking

L. Kuncheva, Francis Williams, Samuel L. Hennessey, Juan José Rodríguez Diez
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Abstract

While there are multiple sources of annotated images and videos for human and vehicle re-identification, databases for individual animal recognition are still in demand. We present a database containing five annotated video clips each containing between 9 and 27 identities. The overall number of individual animals is 20,490, and the total number of classes is 93. The database can be used for testing novel methods for animal re-identification, object detection and tracking. The main challenge of the database is that multiple animals are present in the same video frame, leading to problems with occlusion and noisy, cluttered bounding boxes. To set-up a benchmark on individual animal recognition, we trained and tested 26 classification methods for the five videos and three feature representations. We also report results with state-of-the-art deep learning methods for object detection (MMDet) and tracking (Uni-Track).
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动物再识别与追踪基准数据库
虽然有多种用于人类和车辆再识别的注释图像和视频来源,但仍然需要单个动物识别的数据库。我们提出了一个包含五个注释视频片段的数据库,每个视频片段包含9到27个身份。动物个体总数为20490只,类总数为93个。该数据库可用于测试动物再识别、目标检测和跟踪的新方法。该数据库的主要挑战是多个动物出现在同一视频帧中,导致遮挡和嘈杂、混乱的边界框问题。为了建立个体动物识别的基准,我们对5个视频和3个特征表示训练和测试了26种分类方法。我们还报告了用于目标检测(MMDet)和跟踪(Uni-Track)的最先进的深度学习方法的结果。
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