Eyebirds: Enabling the Public to Recognize Water Birds at Hand.

Jiaogen Zhou, Yang Wang, Caiyun Zhang, Wenbo Wu, Yanzhu Ji, Yeai Zou
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引用次数: 2

Abstract

Enabling the public to easily recognize water birds has a positive effect on wetland bird conservation. However, classifying water birds requires advanced ornithological knowledge, which makes it very difficult for the public to recognize water bird species in daily life. To break the knowledge barrier of water bird recognition for the public, we construct a water bird recognition system (Eyebirds) by using deep learning, which is implemented as a smartphone app. Eyebirds consists of three main modules: (1) a water bird image dataset; (2) an attention mechanism-based deep convolution neural network for water bird recognition (AM-CNN); (3) an app for smartphone users. The waterbird image dataset currently covers 48 families, 203 genera and 548 species of water birds worldwide, which is used to train our water bird recognition model. The AM-CNN model employs attention mechanism to enhance the shallow features of bird images for boosting image classification performance. Experimental results on the North American bird dataset (CUB200-2011) show that the AM-CNN model achieves an average classification accuracy of 85%. On our self-built water bird image dataset, the AM-CNN model also works well with classification accuracies of 94.0%, 93.6% and 86.4% at three levels: family, genus and species, respectively. The user-side app is a WeChat applet deployed in smartphones. With the app, users can easily recognize water birds in expeditions, camping, sightseeing, or even daily life. In summary, our system can bring not only fun, but also water bird knowledge to the public, thus inspiring their interests and further promoting their participation in bird ecological conservation.

Abstract Image

Abstract Image

Abstract Image

眼鸟:让市民认出身边的水鸟。
让市民更容易辨认水鸟,对湿地鸟类保育有积极的影响。然而,水鸟的分类需要很高的鸟类学知识,这使得公众在日常生活中很难识别水鸟的种类。为了打破公众对水鸟识别的知识壁垒,我们利用深度学习技术构建了一个水鸟识别系统(Eyebirds),并以智能手机app的形式实现。Eyebirds主要由三个模块组成:(1)水鸟图像数据集;(2)基于注意机制的深度卷积神经网络识别水鸟(AM-CNN);(3)面向智能手机用户的应用。目前,水鸟图像数据集涵盖了全球48科203属548种水鸟,用于训练我们的水鸟识别模型。AM-CNN模型利用注意机制增强鸟类图像的浅层特征,提高图像分类性能。在北美鸟类数据集(CUB200-2011)上的实验结果表明,AM-CNN模型的平均分类准确率达到85%。在我们自建的水鸟图像数据集上,AM-CNN模型在科、属和种三个层次上的分类准确率分别为94.0%、93.6%和86.4%。用户端应用是部署在智能手机上的微信小程序。有了这款应用,用户可以在探险、露营、观光甚至日常生活中轻松识别水鸟。综上所述,我们的系统不仅可以为市民带来乐趣,还可以为市民带来水鸟知识,从而激发他们的兴趣,进一步促进他们参与鸟类生态保育。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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