基于传递学习的多阶段训练方法识别鸟类物种

R. K N, Rohitha Pasumarty
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引用次数: 14

摘要

物体定位是一种计算机视觉技术,用于识别图像或视频中的鸟、猫、花、汽车等现实世界的物体。该算法基于特征提取和学习算法来识别对象类别的实例。鸟类是地球上最神奇的生物。它们对环境变化很敏感,因此是生物指示物种。该项目的主要目的是通过喜马拉雅鸟类的高分辨率数字图像来识别鸟类种类,这将有助于初学者或一般人识别鸟类。鸟类鉴定的数据集由Kaggle提供,该数据集包含16种鸟类。为了减少过拟合问题,实现了数据增强过程。该模型在Kaggle数据集上的准确率为50.64或0.5064%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition of Bird Species Using Multistage Training with Transmission Learning
Object localization is a computer vision technique to identify real-world objects such as birds, cats, flowers, cars in images or videos. The algorithm is based on a feature extraction and learning algorithm to recognize instances of an object category. Bird’s species are the most amazing creature exist on earth. They are sensitive to changes in the environment and hence acts as bioindicator species. The main aim of this project is to identify bird species from a high-resolution digital image of Himalayan birds which would help beginner bird watchers or general people for identification. The data sets for the identification of birds are provided by Kaggle which consists of 16 species of birds. For the reduction of the overfitting problem, a data augmentation process is implemented. The model achieves an accuracy of 50.64 or 0.5064% on the dataset of Kaggle.
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