نتایج جستجو برای: deep neural network

تعداد نتایج: 998925  

2015
Angie K. Reyes Juan C. Caicedo Jorge E. Camargo

This paper describes the participation of the ECOUAN team in the LifeCLEF 2015 challenge. We used a deep learning approach in which the complete system was learned without hand-engineered components. We pre-trained a convolutional neural network using 1.8 million images and used a fine-tuning strategy to transfer learned recognition capabilities from general domains to the specific challenge of...

Journal: :CoRR 2017
Mohammed Attia Mustafa Hossny Saeid Nahavandi Anousha Yazdabadi

In this paper, we proposed using a hybrid method that utilises deep convolutional and recurrent neural networks for accurate delineation of skin lesion of images supplied with ISBI 2017 lesion segmentation challenge. The proposed method was trained using 1800 images and tested on 150 images from ISBI 2017 challenge.

Journal: :CoRR 2017
Guanjun Guo Hanzi Wang Chunhua Shen Yan Yan Hong-Yuan Mark Liao

Despite recent progress, computational visual aesthetic is still challenging. Image cropping, which refers to the removal of unwanted scene areas, is an important step to improve the aesthetic quality of an image. However, it is challenging to evaluate whether cropping leads to aesthetically pleasing results because the assessment is typically subjective. In this paper, we propose a novel casca...

Journal: :CoRR 2015
Edward Grant Stephan Sahm Mariam Zabihi Marcel van Gerven

Judgments about personality based on facial appearance are strong effectors in social decision making, and are known to have impact on areas from presidential elections to jury decisions. Recent work has shown that it is possible to predict perception of memorability, trustworthiness, intelligence and other attributes in human face images. The most successful of these approaches require face im...

2015
Guglielmo Montone J. Kevin O'Regan Alexander V. Terekhov

In the current study we investigate the ability of a Deep Neural Network (DNN) to reuse, in a new task, features previously acquired in other tasks. The architecture we realized, when learning the new task, will not destroy its ability in solving the previous tasks. Such architecture was obtained by training a series of DNNs on different tasks and then merging them to form a larger DNN by addin...

2018
Jimmy Wu Diondra Peck Scott Hsieh Vandana Dialani Constance D. Lehman Bolei Zhou Vasilis Syrgkanis Lester W. Mackey Genevieve Patterson

This work interprets the internal representations of deep neural networks trained for classification of diseased tissue in 2D mammograms. We propose an expert-in-the-loop interpretation method to label the behavior of internal units in convolutional neural networks (CNNs). Expert radiologists identify that the visual patterns detected by the units are correlated with meaningful medical phenomen...

2011
Moez Baccouche Franck Mamalet Christian Wolf Christophe Garcia Atilla Baskurt

We propose in this paper a fully automated deep model, which learns to classify human actions without using any prior knowledge. The first step of our scheme, based on the extension of Convolutional Neural Networks to 3D, automatically learns spatio-temporal features. A Recurrent Neural Network is then trained to classify each sequence considering the temporal evolution of the learned features ...

Journal: :Journal of cyber security and mobility 2021

HTTP injection attacks are well known cyber security threats with fatal consequences. These initiated by malicious entities (either human or computer) send dangerous unsafe contents into the parameters of requests. Combatting demands for development Web Intrusion Detection Systems (WIDS). Common WIDS follow a rule-based approach signature-based which have common problem high false-positive rate...

2017
Jelmer M. Wolterink Anna M. Dinkla Mark H. F. Savenije Peter R. Seevinck Cornelis A. T. van den Berg Ivana Isgum

MR-only radiotherapy treatment planning requires accurate MR-to-CT synthesis. Current deep learning methods for MR-to-CT synthesis depend on pairwise aligned MR and CT training images of the same patient. However, misalignment between paired images could lead to errors in synthesized CT images. To overcome this, we propose to train a generative adversarial network (GAN) with unpaired MR and CT ...

Journal: :CoRR 2018
Claudio Gallicchio

The extension of deep learning towards temporal data processing is gaining an increasing research interest. In this paper we investigate the properties of state dynamics developed in successive levels of deep recurrent neural networks (RNNs) in terms of short-term memory abilities. Our results reveal interesting insights that shed light on the nature of layering as a factor of RNN design. Notic...

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