使用来自IBMCloud和传统神经网络的沃森视觉识别服务进行鸟类图像识别和分类(CNN)

Fatima Zahra EL Bouni, Tareq El Hariri, Chaime Zouitni, Ilham Ben Bahva, Hafida El Aboui, Aziza El ouaazizi
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引用次数: 1

摘要

鸟类观察者和欣赏鸟类美景的人们在书籍和百科全书中搜索物种并提供特征鸟类的信息,但这种解决方案并不实用,我们提出开发一个名为鸟类预测器的android平台,以帮助用户识别世界上大约30种特有鸟类。将鸟类图像注入卷积神经网络(CNN)以定位突出特征。首先,我们为训练数据创建一个图像生成器。然后,我们加载训练图像。之后,我们创建一个神经网络和卷积层。最后,我们加载未知的鸟类图像,并应用argmax函数得到鸟类特征的概率。为了识别手机用户下载或捕获的图像,使用了从鸟类特征中学习到的参数结果。对于移动应用程序,我们使用IBM云,它提供了存储大量数据的可能性,并使用视觉识别服务对其进行训练,然后我们从android应用程序发送我们想要预测其类型的图像。我们只是使用API Key将包含训练图像的IBM项目与我们的Android Studio项目连接起来,IBM流程对从应用程序捕获或上传的图像进行分类,并返回鸟的类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bird image recognition and classification using Watson visual recognition services from IBMCloud and Conventional Neural Network (CNN)
The birdwatchers and pepole admiring the beauty of birds search in the books and the encyclopedias to identify species and provide information that characterizes eash bird but this solusion is not pratical, we proposed to develope an android platform named Birds Predictor to assist users in recognizing about 30 species of endemic birds in the world. Bird images are injected in a convolutional neural network (CNN) to localize prominent features. First, we create an image generator for the training data. Then, we load training images. After that, we create a neural network and the convolutional layer. Finally, we load the unknown bird image and applied the argmax function to get a probability of bird features. To identify the images downloaded or captured by mobile users the results of the parameters learned from the characteristics of the birds are used. For the Mobile Application we use IBM Cloud that offers the possibility to store a lot of data and trains it using the visual recognition service, then we send the image that we want to predict its type from our android application. We just connect the IBM project that contains the training images with our Android Studio project using an API Key, and IBM process classifies the image captured or uploaded from the application and returned the type of bird.
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