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Detection of Birds in the Wild using Deep Learning Methods

机译:利用深层学习方法检测野外鸟类

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Object detection and localization is one of the prominent applications of the computer vision. The paper presents a comparative study of state of the art deep learning methods-YOLOv2, YOLOv3 and Mask R-CNN, for detection of birds in the wild. Detection of birds is an important problem across multiple applications including the aviation safety, avian protection and ecological science of migrant bird species. Deep learning based methods are very pre-eminent at detecting and localizing the birds in the image as it can tackle the conditions wherein the birds shown are diverse in shapes and sizes and most importantly the complex backgrounds they are in. We used the training and testing dataset provided by the NCVPRIG (BROID) conference which contained 325 and 275 images respectively. For training, we used the pre-trained models on the VOC 2012 and COCO dataset and trained them on the 325 images. We used F-score as one of the performance metrics, and F-Scores were 0.8140, 0.8721, 0.8688 for the YOLOv2, YOLOv3 and Mask R-CNN respectively. The results show that YOLOv3 outperforms YOLOv2 and is a marginal improvement over Mask R-CNN.
机译:对象检测和定位是计算机视觉的突出应用之一。本文提出了艺术深层学习方法 - yolov2,yolov3和掩模R-Cnn的比较研究,用于检测野生鸟类。鸟类的检测是多种应用的重要问题,包括航空安全,禽类保护和移民鸟类生态学。基于深度的学习方法在检测和定位图像中的鸟类时非常卓越,因为它可以解决所示鸟类的形状和尺寸的鸟类以及最重要的是它们所处的复杂背景。我们使用了培训和测试DataSet由NCVPrig(BROIC)会议分别包含325和275个图像。对于培训,我们在VOC 2012和Coco DataSet上使用了预先训练的模型,并在325图像上培训。我们使用F分作为性能度量之一,F分别为0.8140,0.8721,0.8688,分别用于yolov2,Yolov3和掩模R-CNN。结果表明,yolov3优于yolov2并且是对掩模R-CNN的边缘改善。

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