MixNN: Combating Noisy Labels in Deep Learning by Mixing with Nearest Neighbors

Author(s):  
Yangdi Lu ◽  
Wenbo He
2020 ◽  
Author(s):  
Li Ding ◽  
Ajay E. Kuriyan ◽  
Rajeev S. Ramchandran ◽  
Charles C. Wykoff ◽  
Gaurav Sharma

<div>We propose a deep-learning based annotation efficient framework for vessel detection in ultra-widefield (UWF) fundus photography (FP) that does not require de novo labeled UWF FP vessel maps. Our approach utilizes concurrently captured UWF fluorescein angiography (FA) images, for which effective deep learning approaches have recently become available, and iterates between a multi-modal registration step and a weakly-supervised learning step. In the registration step, the UWF FA vessel maps detected with a pre-trained deep neural network (DNN) are registered with the UWF FP via parametric chamfer alignment. The warped vessel maps can be used as the tentative training data but inevitably contain incorrect (noisy) labels due to the differences between FA and FP modalities and the errors in the registration. In the learning step, a robust learning method is proposed to train DNNs with noisy labels. The detected FP vessel maps are used for the registration in the following iteration. The registration and the vessel detection benefit from each other and are progressively improved. Once trained, the UWF FP vessel detection DNN from the proposed approach allows FP vessel detection without requiring concurrently captured UWF FA images. We validate the proposed framework on a new UWF FP dataset, PRIMEFP20, and on existing narrow field FP datasets. Experimental evaluation, using both pixel wise metrics and the CAL metrics designed to provide better agreement with human assessment, shows that the proposed approach provides accurate vessel detection, without requiring manually labeled UWF FP training data.</div>


Author(s):  
Marely Lee ◽  
Shuli Xing

To improve the tangerine crop yield, the work of recognizing and then disposing of specific pests is becoming increasingly important. The task of recognition is based on the features extracted from the images that have been collected from websites and outdoors. Traditional recognition and deep learning methods, such as KNN (k-nearest neighbors) and AlexNet, are not preferred by knowledgeable researchers, who have proven them inaccurate. In this paper, we exploit four kinds of structures of advanced deep learning to classify 10 citrus pests. The experimental results show that Inception-ResNet-V3 obtains the minimum classification error.


Author(s):  
Jesús Bobadilla ◽  
Ángel González-Prieto ◽  
Fernando Ortega ◽  
Raúl Lara-Cabrera

AbstractIn the context of recommender systems based on collaborative filtering (CF), obtaining accurate neighborhoods of the items of the datasets is relevant. Beyond particular individual recommendations, knowing these neighbors is fundamental for adding differentiating factors to recommendations, such as explainability, detecting shilling attacks, visualizing item relations, clustering, and providing reliabilities. This paper proposes a deep learning architecture to efficiently and accurately obtain CF neighborhoods. The proposed design makes use of a classification neural network to encode the dataset patterns of the items, followed by a generative process that obtains the neighborhood of each item by means of an iterative gradient localization algorithm. Experiments have been conducted using five popular open datasets and five representative baselines. The results show that the proposed method improves the quality of the neighborhoods compared to the K-Nearest Neighbors (KNN) algorithm for the five selected similarity measure baselines. The efficiency of the proposed method is also shown by comparing its computational requirements with that of KNN.


2018 ◽  
Vol 7 (4.38) ◽  
pp. 213
Author(s):  
Rajesh Kumar Ojha ◽  
Dr. Bhagirathi Nayak

Recommender systems are one of the important methodologies in machine learning technologies, which is using in current business scenario. This article proposes a book recommender system using deep learning technique and k-Nearest Neighbors (k-NN) classification. Deep learning technique is one of the most effective techniques in the field of recommender systems. Recommender systems are intelligent systems in Machine Learning that can make difference from other algorithms. This article considers application of Machine Learning Technology and we present an approach based a recommender system. We used k-Nearest Neighbors classification algorithm of deep learning technique to classify users based book recommender system. We analyze the traditional collaborative filtering with our methodology and also to compare with them. Our outcomes display the projected algorithm is more precise over the existing algorithm, it also consumes less time and reliable than the existing methods.   


2019 ◽  
Author(s):  
Bruno Vicente Alves de Lima ◽  
Adrião Duarte D. Neto ◽  
Lúcia Emília Soares Silva ◽  
Vinicius Ponte Machado ◽  
Joao Guilherme Cavalcanti Costa

Author(s):  
Guillaume SANCHEZ ◽  
Vincente GUIS ◽  
Ricard MARXER ◽  
Frederic BOUCHARA
Keyword(s):  

2020 ◽  
Vol 65 ◽  
pp. 101759 ◽  
Author(s):  
Davood Karimi ◽  
Haoran Dou ◽  
Simon K. Warfield ◽  
Ali Gholipour

Author(s):  
Qian Zhang ◽  
Feifei Lee ◽  
Ya-gang Wang ◽  
Damin Ding ◽  
Shuai Yang ◽  
...  

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