I. Zualkernan, S. Dhou, J. Judas, A. Sajun, Brylle Ryan Gomez, Lana Alhaj Hussain, Dara Sakhnini
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引用次数: 16
Abstract
Maintaining biodiversity is a key component of the United Nations (UN) “Life on Land” sustainability goal. Remote camera traps monitoring animals' movements support research in biodiversity. However, images from these camera traps are currently labeled manually resulting in high processing costs and long delays. This paper proposes an IoT -based system that leverages deep learning and edge computing to automatically label camera trap images and transmit this information to scientists in a timely manner. Inception-V3, MobileNet-V2, ResNet-18, and DenseNet-121 were trained on data consisting of 33,984 images taken during day and night with 6 animal classes. Inception- V3 yielded the highest macro average F1-score of 0.93 and an accuracy of 94%. An IoT-based system was developed that directly captures images from a commercial camera trap, does the inference on the edge using a Raspberry Pi (RPi), and sends the classification results back to a cloud database system. A mobile App is used to monitor the camera images classified on camera traps in real-time. The RPi could easily sustain a rate of processing 1 image every 2 seconds with an average latency of 1.8 second/image. After capture and pre-processing, each inference took an average of 0.2 Millisecond/image on a RPi Model 4B.
维持生物多样性是联合国“陆地生命”可持续发展目标的关键组成部分。监视动物活动的远程摄像机陷阱支持生物多样性研究。然而,来自这些相机陷阱的图像目前是手动标记的,导致高处理成本和长时间的延迟。本文提出了一种基于物联网的系统,该系统利用深度学习和边缘计算来自动标记相机陷阱图像,并及时将这些信息传输给科学家。Inception-V3、MobileNet-V2、ResNet-18和DenseNet-121在6个动物类别的33,984张白天和夜间拍摄的图像上进行训练。Inception- V3的宏观平均f1得分最高,为0.93,准确率为94%。开发了一个基于物联网的系统,该系统直接从商业相机陷阱中捕获图像,使用树莓派(RPi)在边缘上进行推理,并将分类结果发送回云数据库系统。使用手机App实时监控摄像机陷阱上分类的摄像机图像。RPi可以很容易地维持每2秒处理1个图像的速度,平均延迟为1.8秒/图像。在捕获和预处理之后,在RPi Model 4B上,每个推理平均花费0.2毫秒/图像。