Evaluating ORB and SIFT With Neural Network as Alternatives to CNN for Traffic Classification in SDN Environments

Software-Defined Networking (SDN) centralizes control and separates the control plane from the data plane, enhancing flexibility and efficiency but also increasing the attack surface. Consequently, effective traffic classification is crucial for identifying cyber threats within SDN infrastructures....

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Main Authors: Hicham Yzzogh, Hafssa Benaboud
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10937120/
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author Hicham Yzzogh
Hafssa Benaboud
author_facet Hicham Yzzogh
Hafssa Benaboud
author_sort Hicham Yzzogh
collection DOAJ
description Software-Defined Networking (SDN) centralizes control and separates the control plane from the data plane, enhancing flexibility and efficiency but also increasing the attack surface. Consequently, effective traffic classification is crucial for identifying cyber threats within SDN infrastructures. To address this need, we explore the potential of Convolutional Neural Network (CNN), which is known for its superior performance in image classification tasks. To leverage CNN in this context, we propose converting traffic flow data into images using the flow-to-bar chart conversion method. We also employ two well-known methods for generating images from tabular data: the Image Generator for Tabular Data (IGTD) based on Euclidean distance and the IGTD based on Manhattan distance. As an alternative to CNN, we use ORB (Oriented FAST and Rotated BRIEF) or SIFT (Scale-Invariant Feature Transform) for feature extraction, combined with neural network for classification. This approach reduces computational overhead while maintaining high accuracy. Our approach, which incorporates flow-to-bar chart conversion along with ORB and a neural network (NN), achieved 97.14% accuracy on the InSDN dataset and 99.86% on the CIC-DDoS2019 dataset, demonstrating its effectiveness in traffic classification.
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spelling doaj-art-8dfafc56cb47464ca6efdc03b48b081a2025-08-20T02:54:22ZengIEEEIEEE Access2169-35362025-01-0113514845149810.1109/ACCESS.2025.355344910937120Evaluating ORB and SIFT With Neural Network as Alternatives to CNN for Traffic Classification in SDN EnvironmentsHicham Yzzogh0https://orcid.org/0009-0009-8532-7371Hafssa Benaboud1https://orcid.org/0000-0002-5027-8217IPSS, Faculty of Sciences, Mohammed V. University in Rabat, Rabat, MoroccoIPSS, Faculty of Sciences, Mohammed V. University in Rabat, Rabat, MoroccoSoftware-Defined Networking (SDN) centralizes control and separates the control plane from the data plane, enhancing flexibility and efficiency but also increasing the attack surface. Consequently, effective traffic classification is crucial for identifying cyber threats within SDN infrastructures. To address this need, we explore the potential of Convolutional Neural Network (CNN), which is known for its superior performance in image classification tasks. To leverage CNN in this context, we propose converting traffic flow data into images using the flow-to-bar chart conversion method. We also employ two well-known methods for generating images from tabular data: the Image Generator for Tabular Data (IGTD) based on Euclidean distance and the IGTD based on Manhattan distance. As an alternative to CNN, we use ORB (Oriented FAST and Rotated BRIEF) or SIFT (Scale-Invariant Feature Transform) for feature extraction, combined with neural network for classification. This approach reduces computational overhead while maintaining high accuracy. Our approach, which incorporates flow-to-bar chart conversion along with ORB and a neural network (NN), achieved 97.14% accuracy on the InSDN dataset and 99.86% on the CIC-DDoS2019 dataset, demonstrating its effectiveness in traffic classification.https://ieeexplore.ieee.org/document/10937120/Software-defined networkingconvolutional neural networkscale-invariant feature transformoriented fast and rotatedsecuritytraffic classification
spellingShingle Hicham Yzzogh
Hafssa Benaboud
Evaluating ORB and SIFT With Neural Network as Alternatives to CNN for Traffic Classification in SDN Environments
IEEE Access
Software-defined networking
convolutional neural network
scale-invariant feature transform
oriented fast and rotated
security
traffic classification
title Evaluating ORB and SIFT With Neural Network as Alternatives to CNN for Traffic Classification in SDN Environments
title_full Evaluating ORB and SIFT With Neural Network as Alternatives to CNN for Traffic Classification in SDN Environments
title_fullStr Evaluating ORB and SIFT With Neural Network as Alternatives to CNN for Traffic Classification in SDN Environments
title_full_unstemmed Evaluating ORB and SIFT With Neural Network as Alternatives to CNN for Traffic Classification in SDN Environments
title_short Evaluating ORB and SIFT With Neural Network as Alternatives to CNN for Traffic Classification in SDN Environments
title_sort evaluating orb and sift with neural network as alternatives to cnn for traffic classification in sdn environments
topic Software-defined networking
convolutional neural network
scale-invariant feature transform
oriented fast and rotated
security
traffic classification
url https://ieeexplore.ieee.org/document/10937120/
work_keys_str_mv AT hichamyzzogh evaluatingorbandsiftwithneuralnetworkasalternativestocnnfortrafficclassificationinsdnenvironments
AT hafssabenaboud evaluatingorbandsiftwithneuralnetworkasalternativestocnnfortrafficclassificationinsdnenvironments