以基于YOLOv5的猫狗人脸检测为例

Emine Cengil, A. Cinar, Muhammet Yıldırım
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引用次数: 5

摘要

目标检测是许多领域的共同研究课题。特别是,距离很近的物体很难被探测到。猫和狗的品种包括许多品种。这些物种彼此相似,与另一类中的一些物种相似。因此,很难区分猫和狗的脸,特别是对某些物种。该研究使用了YOLO算法,该算法在众多目标检测挑战中具有很高的灵敏度和速度。牛津宠物数据集由大约3600张图像组成,包含来自37种不同类型的猫/狗类的图像,用于训练和测试。我们提出了一种基于YOLOv5的猫狗查找方法。我们使用了不同参数的YOLOv5算法。对四种不同的模型进行了比较和评价。实验表明,YOLOv5模型在各自的任务上取得了成功的结果。YOLOv5l的mAP值为94.1,表明基于yolov5的猫/狗检测的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Case Study: Cat-Dog Face Detector Based on YOLOv5
Object detection is a common research topic for many fields. In particular, objects that are close together are difficult to detect. The breed of cats and dogs includes many species. These species are similar to each other and to some species in the other class. Therefore, it is difficult to distinguish the faces of cats and dogs, especially for some species. The study uses the YOLO algorithms, which has very high sensitivity and speed in numerous object detection challenges. The Oxford pets dataset, consisting of approximately 3600 images, containing images from 37 different types of cat/dog classes, is utilized for training and testing. We propose a method based on YOLOv5 to find cats and dogs. We utilized the YOLOv5 algorithm with different parameters. Four different models are compared and evaluated. Experiments demonstrate that YOLOv5 models achieve successful results for the respective task. The mAP of YOLOv5l is 94.1, demonstrating the efficacy of YOLOv5-based cat/dog detection.
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