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Survei Penggunaan Tensorflow pada Machine Learning untuk Identifikasi Ikan Kawasan Lahan Basah

机译:用机器学习识别湿陆地区张力流的调查

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Wetlands are habitats commonly used for fish cultivation. South Kalimantan is one of the provinces that has a wetland area, which is 11,707,400ha, there are 67 rivers and an estimated 200 species of fish. This shows the abundant wealth of fish treasures and economic value. The study of fish identification is an important subject for the preservation of wetland fish. In the field of artificial intelligence, identification can be done using Machine Learning (ML). There are many libraries, a collection of functions that can be used in ML development, one of which is Tensorflow. In this paper, we survey a variety of literature on the use of Tensorflow, as well as datasets, algorithms, and methods that can be used in developing wetland area fish image identification applications. The results of the literature survey show that Tensorflow can be used for the development of fish character identification applications. There are many datasets that can be used such as MNIST, Oxford-I7, Oxford-102, LHI-Animal-Faces, Taiwan marine fish, KTH-Animal, NASNet, ResNet, and MobileNet. Classification methods that can be used to classify fish images include CNN, R-CNN, DCNN, Fast R-CNN, kNN, PNN, Faster R-CNN, SVM, LR, RF, PCA and KFA. Tensorflow provides many models that can be used for image classification, including Inception-v3 and MobileNets, and supports models such as CNN, RNN, RBM, and DBN. To speed up the classification process, image dimensions can be reduced using the MDS, LLE, Isomap, and SE algorithms.
机译:湿地是常用用于鱼类种植的栖息地。南荷马丹是湿地区的省份之一,湿地面积为11,707,400HA,有67条河流和估计的200种鱼类。这表明了鱼珍宝和经济价值丰富的丰富。对鱼类鉴定的研究是保存湿地鱼的重要主题。在人工智能领域,可以使用机器学习(ml)来完成识别。有许多库,可以在ML开发中使用的函数集合,其中一个是TensorFlow。在本文中,我们对使用Tensorflow的各种文献以及可用于开发湿地区域鱼图像识别应用的数据集,算法和方法。文献调查结果表明,Tensorflow可用于开发鱼字符识别应用。有许多数据集可以使用,如Mnist,牛津-i7,牛津-102,Lhi-Anjes,台湾海洋鱼类,Kth-Animal,Nasnet,Reset和Mobilenet。可用于对鱼类进行分类的分类方法包括CNN,R-CNN,DCNN,FAST R-CNN,KNN,PNN,更快的R-CNN,SVM,LR,RF,PCA和KFA。 Tensorflow提供了许多型号,可用于图像分类,包括Inception-V3和MobileNets,并支持CNN,RNN,RBM和DBN等模型。为了加快分类过程,可以使用MDS,LLE,ISOMAP和SE算法来减少图像尺寸。

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