02452nas a2200241 4500000000100000000000100001008004100002260001200043653001200055653003900067653002500106653001900131653001900150653002100169100001900190700001800209245008800227856008100315300001200396490000600408520178200414022001402196 2022 d c06/202210aMalware10aConvolutional Neural Network (CNN)10aFaster RCNN (F-RCNN)10aClassification10aMalware Static10aDynamic Analysis1 aMahendra Deore1 aUday Kulkarni00aMDFRCNN: Malware Detection using Faster Region Proposals Convolution Neural Network uhttps://www.ijimai.org/journal/sites/default/files/2022-05/ijimai_7_4_13.pdf a146-1620 v73 aTechnological advancement of smart devices has opened up a new trend: Internet of Everything (IoE), where all devices are connected to the web. Large scale networking benefits the community by increasing connectivity and giving control of physical devices. On the other hand, there exists an increased ‘Threat’ of an ‘Attack’. Attackers are targeting these devices, as it may provide an easier ‘backdoor entry to the users’ network’.MALicious softWARE (MalWare) is a major threat to user security. Fast and accurate detection of malware attacks are the sine qua non of IoE, where large scale networking is involved. The paper proposes use of a visualization technique where the disassembled malware code is converted into gray images, as well as use of Image Similarity based Statistical Parameters (ISSP) such as Normalized Cross correlation (NCC), Average difference (AD), Maximum difference (MaxD), Singular Structural Similarity Index Module (SSIM), Laplacian Mean Square Error (LMSE), MSE and PSNR. A vector consisting of gray image with statistical parameters is trained using a Faster Region proposals Convolution Neural Network (F-RCNN) classifier. The experiment results are promising as the proposed method includes ISSP with F-RCNN training. Overall training time of learning the semantics of higher-level malicious behaviors is less. Identification of malware (testing phase) is also performed in less time. The fusion of image and statistical parameter enhances system performance with greater accuracy. The benchmark database from Microsoft Malware Classification challenge has been used to analyze system performance, which is available on the Kaggle website. An overall average classification accuracy of 98.12% is achieved by the proposed method. a1989-1660