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Dive into the research topics where Muhammad Attique Khan is active.

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Featured researches published by Muhammad Attique Khan.


Pattern Analysis and Applications | 2018

An implementation of optimized framework for action classification using multilayers neural network on selected fused features

Muhammad Attique Khan; Tallha Akram; Muhammad Sharif; Muhammad Younus Javed; Nazeer Muhammad; Mussarat Yasmin

AbstractIn video sequences, human action recognition is a challenging problem due to motion variation, in frame person difference, and setting of video recording in the field of computer vision. Since last few years, applications of human activity recognition have increased significantly. In the literature, many techniques are implemented for human action recognition, but still they face problem in contrast of foreground region, segmentation, feature extraction, and feature selection. This article contributes a novel human action recognition method by embedding the proposed frames fusion working on the principle of pixels similarity. nAn improved hybrid feature extraction increases the recognition rate and allows efficient classification in the complex environment. The design consists of four phases, (a) enhancement of video frames (b) threshold-based background subtraction and construction of saliency map (c) feature extraction and selection (d) neural network (NN) for human action classification.n Results have been tested using five benchmark datasets including Weizmann, KTH, UIUC, Muhavi, and WVU and obtaining recognition rate 97.2, 99.8, 99.4, 99.9, and 99.9%, respectively. Contingency table and graphical curves support our claims. Comparison with existent techniques identifies the recognition rate and trueness of our proposed method.n


Microscopy Research and Technique | 2018

An improved strategy for skin lesion detection and classification using uniform segmentation and feature selection based approach

Muhammad Nasir; Muhammad Attique Khan; Muhammad Sharif; Ikram Ullah Lali; Tanzila Saba; Tassawar Iqbal

Melanoma is the deadliest type of skin cancer with highest mortality rate. However, the annihilation in early stage implies a high survival rate therefore, it demands early diagnosis. The accustomed diagnosis methods are costly and cumbersome due to the involvement of experienced experts as well as the requirements for highly equipped environment. The recent advancements in computerized solutions for these diagnoses are highly promising with improved accuracy and efficiency. In this article, we proposed a method for the classification of melanoma and benign skin lesions. Our approach integrates preprocessing, lesion segmentation, features extraction, features selection, and classification. Preprocessing is executed in the context of hair removal by DullRazor, whereas lesion texture and color information are utilized to enhance the lesion contrast. In lesion segmentation, a hybrid technique has been implemented and results are fused using additive law of probability. Serial based method is applied subsequently that extracts and fuses the traits such as color, texture, and HOG (shape). The fused features are selected afterwards by implementing a novel Boltzman Entropy method. Finally, the selected features are classified by Support Vector Machine. The proposed method is evaluated on publically available data set PH2. Our approach has provided promising results of sensitivity 97.7%, specificity 96.7%, accuracy 97.5%, and F‐score 97.5%, which are significantly better than the results of existing methods available on the same data set. The proposed method detects and classifies melanoma significantly good as compared to existing methods.


Iet Image Processing | 2018

License number plate recognition system using entropy-based features selection approach with SVM

Muhammad Attique Khan; Muhammad Sharif; Muhammad Younus Javed; Tallha Akram; Mussarat Yasmin; Tanzila Saba

License plate recognition (LPR) system plays a vital role in security applications which include road traffic monitoring, street activity monitoring, identification of potential threats, and so on. Numerous methods were adopted for LPR but still, there is enough space for a single standard approach which can be able to deal with all sorts of problems such as light variations, occlusion, and multi-views. The proposed approach is an effort to deal under such conditions by incorporating multiple features extraction and fusion. The proposed architecture is comprised of four primary steps: (i) selection of luminance channel from CIE-Lab colour space, (ii) binary segmentation of selected channel followed by image refinement, (iii) a fusion of Histogram of oriented gradients (HOG) and geometric features followed by a selection of appropriate features using a novel entropy-based method, and (iv) features classification with support vector machine (SVM). To authenticate the results of proposed approach, different performance measures are considered. The selected measures are False positive rate (FPR), False negative rate (FNR), and accuracy which is achieved maximum up to 99.5%. Simulation results reveal that the proposed method performs exceptionally better compared with existing works.


Computers and Electronics in Agriculture | 2018

Detection and classification of citrus diseases in agriculture based on optimized weighted segmentation and feature selection

Muhammad Sharif; Muhammad Attique Khan; Zahid Iqbal; Muhammad Faisal Azam; M. Ikram Ullah Lali; Muhammad Younus Javed

Abstract In agriculture, plant diseases are primarily responsible for the reduction in production which causes economic losses. In plants, citrus is used as a major source of nutrients like vitamin C throughout the world. However, ‘Citrus’ diseases badly effect the production and quality of citrus fruits. From last decade, the computer vision and image processing techniques have been widely used for detection and classification of diseases in plants. In this article, we propose a hybrid method for detection and classification of diseases in citrus plants. The proposed method consists of two primary phases; (a) detection of lesion spot on the citrus fruits and leaves; (b) classification of citrus diseases. The citrus lesion spots are extracted by an optimized weighted segmentation method, which is performed on an enhanced input image. Then, color, texture, and geometric features are fused in a codebook. Furthermore, the best features are selected by implementing a hybrid feature selection method, which consists of PCA score, entropy, and skewness-based covariance vector. The selected features are fed to Multi-Class Support Vector Machine (M-SVM) for final citrus disease classification. The proposed technique is tested on Citrus Disease Image Gallery Dataset, Combined dataset (Plant Village and Citrus Images Database of Infested with Scale), and our own collected images database. We used these datasets for detection and classification of citrus diseases namely anthracnose, black spot, canker, scab, greening, and melanose. The proposed technique outperforms the existing methods and achieves 97% classification accuracy on citrus disease image gallery dataset, 89% on combined dataset and 90.4% on our local dataset.


Future Generation Computer Systems | 2018

Appearance based pedestrians’ gender recognition by employing stacked auto encoders in deep learning

Mudassar Raza; Muhammad Sharif; Mussarat Yasmin; Muhammad Attique Khan; Tanzila Saba; Steven Lawrence Fernandes

Abstract Pedestrians’ gender is a soft attribute which is useful in many areas of computer vision including human robot interaction, intelligent surveillance and human behavior analysis. Apart from its importance, pedestrians’ gender prediction is one of the challenging methodologies in image processing. In this article, a deep learning approach is presented to classify a pedestrian as a male or a female. As a pre-processing step, pedestrian parsing is performed by a deep decompositional neural network method. The outcome of this network is a binary mask that maps the pedestrian full body from the input image. The pedestrian body image is then extracted by applying the generated pedestrian mask to the input image. This pre-processed image is then supplied to the stacked sparse auto encoder with soft max classifier for prediction. The proposed network is trained and tested separately on different pedestrians’ views such as frontal views, back views and mixed views. The training is performed on PETA dataset. The experiments for testing are performed on MIT and PETA datasets (containing images other than train images). The accuracy values on MIT dataset are calculated as 82.9%, 81.8% and 82.4% on frontal, back and mixed views respectively. The mean AUC value by proposed scheme on PETA dataset is found as 91.5% ± 4. The performance measures and comparisons with existing works depict the robustness and applicability of proposed methodology.


Computers and Electronics in Agriculture | 2018

An automated detection and classification of citrus plant diseases using image processing techniques: A review

Zahid Iqbal; Muhammad Attique Khan; Muhammad Sharif; Jamal Hussain Shah; Muhammad Habib ur Rehman; Kashif Javed

Abstract The citrus plants such as lemons, mandarins, oranges, tangerines, grapefruits, and limes are commonly grown fruits all over the world. The citrus producing companies create a large amount of waste every year whereby 50% of citrus peel is destroyed every year due to different plant diseases. This paper presents a survey on the different methods relevant to citrus plants leaves diseases detection and the classification. The article presents a detailed taxonomy of citrus leaf diseases. Initially, the challenges of each step are discussed in detail, which affects the detection and classification accuracy. In addition, a thorough literature review of automated disease detection and classification methods is presented. To this end, we study different image preprocessing, segmentation, feature extraction, features selection, and classification methods. In addition, also discuss the importance of features extraction and deep learning methods. The survey presents the detailed discussion on studies, outlines their strengths and limitations, and uncovers further research issues. The survey results reveal that the adoption of automated detection and classification methods for citrus plants diseases is still in its infancy. Hence new tools are needed to fully automate the detection and classification processes.


Pattern Recognition Letters | 2018

A framework for offline signature verification system: Best features selection approach

Muhammad Sharif; Muhammad Attique Khan; Muhammad Faisal; Mussarat Yasmin; Steven Lawrence Fernandes


Eurasip Journal on Image and Video Processing | 2017

A framework of human detection and action recognition based on uniform segmentation and combination of Euclidean distance and joint entropy-based features selection

Muhammad Sharif; Muhammad Attique Khan; Tallha Akram; Muhammad Younus Javed; Tanzila Saba; Amjad Rehman


Journal of Mechanics in Medicine and Biology | 2018

AUTOMATED ULCER AND BLEEDING CLASSIFICATION FROM WCE IMAGES USING MULTIPLE FEATURES FUSION AND SELECTION

Amna Liaqat; Muhammad Attique Khan; Jamal Hussain Shah; Muhammad Sharif; Mussarat Yasmin; Steven Lawrence Fernandes


Journal of Ambient Intelligence and Humanized Computing | 2018

Skin lesion segmentation and recognition using multichannel saliency estimation and M-SVM on selected serially fused features

Tallha Akram; Muhammad Attique Khan; Muhammad Sharif; Mussarat Yasmin

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Mussarat Yasmin

COMSATS Institute of Information Technology

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Tallha Akram

COMSATS Institute of Information Technology

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Tanzila Saba

Prince Sultan University

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Jamal Hussain Shah

COMSATS Institute of Information Technology

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Zahid Iqbal

COMSATS Institute of Information Technology

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Amna Liaqat

COMSATS Institute of Information Technology

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Faisal Azam

COMSATS Institute of Information Technology

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