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Reliable and Efficient Bear-presence Detection based on Region Proposal of Low-resolution

机译:基于低分辨率的区域建议可靠和高效的熊存在检测

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The bear attack to human beings is one of the fatal accidents, and it is becoming more critical to avoid such accidents because human ’s encountering a bear happens every year, even in a city area. It is required to discover bears quickly and warn people to avoid bear accidents. To realize sensor nodes that detect bears automatically using image recognition technology, we aim to realize an accurate and computationally-efficient bear-presence detection. In this paper, we propose a bear-presence detection method combining region proposal of a low-resolution and image classification. In the experiments, we show that the proposed method achieves 4.9% higher recall and 2.3% higher F-score than image classification with-out region-proposal. Moreover, the proposed method achieved 0.6% higher recall and 18.5% higher F-score than YOLOv3, which is one of state-of-the-art object detection methods while the execution time was reduced to 72.4% for bear images and 55.5% for non-bear images.
机译:对人类的熊攻击是致命事故之一,避免这种事故变得越来越重要,因为即使在城市地区也发生了人类遇到熊。需要快速发现熊,并警告人们以避免熊事故。为了实现使用图像识别技术自动检测熊的传感器节点,我们的目标是实现准确和计算的熊存在检测。在本文中,我们提出了一种结合区域提议的熊存在检测方法和图像分类。在实验中,我们表明,该方法召回的召回量高4.9%,F分数比图像分类提出4.9%。此外,所提出的方法召回0.6%较高的召回和比yolov3更高的F分,这是最先进的物体检测方法之一,而执行时间降至熊图像的72.4%,55.5%非熊图像。

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