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تحديد مواقع سرطان الدماغ وتصنيفها باستخدام SVD مع ANN == Brain Tumor Detection, Allocation and Classification Using SVD with ANN

Author name: نعمة عناد كاظم عبدالله
Supervisor name: نضال خضير العبادي
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:

طريقة جديدة في تنقيب الات الحالات المحددة لغرض عنقدة البيانات

Author name: عبود خريبط جاسم
Supervisor name: توفيق عبد الخالق الاسدي
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: Arabic
University location: Babylon
First pages:

تنقيب بيانات البروتين اعتمادا على مرض اعصاب معين == Protein Data Mining based on A Specific Neurodegenerative Disease

Author name: سرى زكي ناجي الراشد
Supervisor name: نبيل هاشم الاعرجي
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:

تجفير جزئي لملفات الفيديو == A Partial Encryption for Digital Video

Author name: مي عبد المنعم صالح
Supervisor name: هالة بهجت عبد الوهاب
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:

تحسين جودة الخدمة في شبكات الند للند غير المهيكلة باستخدام عنقدة الارضة == Quality of Services Enhancement in Unstructured Peer - to - Peer Networks using Termite - Based Clustering

Author name: حازم جليل حسن
Supervisor name: صفاء عبيس مهدي
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:

محاكاة اندماج اطارات الفيديو == Simulation of Fusion for Video Frames

Author name: ندى جاسم حبيب
Supervisor name: سعد طالب حسون
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:

بناء خوارزميه محسنه عاليه الاستنباط == Building improved metaheuristic algorithm

Author name: هاشم كريم عبد الرضا
Supervisor name: ليث علي عبد الرحيم
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:

مخطط مسار مثالي وهجين من اجل تخطيط مسارات لاكثر من روبوت == Hybrid Optimal Path Planner for Multi - Robot Path Planning

Author name: صفاء حسين شويل
Supervisor name: علياء كريم عبد الحسن
General topic: Computer Science
Specific topic: Artificial Intelligence
Degree: Doctorate
Language: English
University location: Babylon
First pages:

خوارزميات كفؤة للتشخيص المبكر لاعتلال شبكية العين بسبب مرض السكري == Efficient Algorithms for Early Diagnosis of Diabetic Retinopathy

Author name: ايناس حمود محيسن السعدي
Supervisor name: نضال خضير العبادي
General topic: Computer Science
Specific topic: Artificial Intelligence
Degree: Doctorate
Language: English
University location: Babylon
First pages:

تقييم الية الثقة في شبكات المركبات == Evaluation of Trust Mechanism for VANETs

Author name: حوراء عادل نوري
Supervisor name: ستار بدر سدخان المالكي
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:
Abstract: تدعم شبكة المركبات العديد من التطبيقات التجارية كانظمة النقل الذكية (ITS)، ولكن كان الدافع الاساسي وراء هذه الشبكات هو سلامة اتصالات الطريق الذي تعتمد فيه كل مركبة على الرسائل المرسلة لها من قبل نظائرها من المركبات الاخرى والتي قد تكون ضارة. ان الطبيعة المتغيرة والديناميكية لطبولوجيا الشبكة يجعل بامكان اي مركبة مغادرة الشبكة والانضمام اليها في اي وقت سواء كانت هذه المركبات موثوق بها ام لا. لذا يجب ان تتمكن كل مركبة من تقييم المعلومات الواردة لها من المركبات الاخرى واتخاذ القرارات بشانها والاستجابة لتلك المعلومات. عليه فبدون انشاء اليه مناسبة لادارة الثقة فان الاتصالات في هذه الشبكات قد تكون عرضه للتهديد الامني، حيث توجب الانظمة الامنية ان ياتي الارسال من مصدر موثوق لذا فان الثقة والامن مفهومان مترابطان لا يمكن عزلهما.لم يتحقق حتى الان تطوير نماذج امنة تماما لهذه الشبكات، لذا يهدف مجال البحث الجيد الى استثمار معظم الطرق السابقة في المؤلفات للبحث عن اطار عام لوضع اساس متين لتطوير الية احتساب السمعة والموثوقية في شبكات المركبات. يدعم هذا العمل امن شبكات المركبات من خلال استخدام تقنية الخوارزمية الجينية بالاضافة لنظرية اللعبة لتطوير الية ثقة متعددة الخصائص. | VANET support many commercial applications such as Intelligent Transportation Systems (ITS), but the original motivation behind it was safety of road communications where each vehicle has to rely on messages sent out by peer vehicles, which might be malicious. The dynamic changing nature of network topology makes any vehicle to leave and join the network at any point of time whether these vehicles were trusted or untrusted. Therefore, each vehicle must be able to assess, make decisions and respond to information received from other vehicles. So without having a proper mechanism for trust management, communication in VANET might be prone to security threat. Security systems impose that the transmission come from a trusted source, so trust and security are two interdependent concepts that there cannot be segregated.The development of fully secure schemes for these networks has not been entirely achieved till now. So, a good research field aims to exploit most of the previous approaches in literatures looking for a general framework to put solid basis to the development of Distributed Trust and Reputation Mechanism for VANET. The work supports the security of VANET by using a genetic algorithm technique in addition with game theory to develop a multi - featured trust mechanism

استخدام تقنية الحساب المرن لتقييم RSA وAES == Soft Computing Technique to Evaluate RSA and AES

Author name: فرقد حامد عبد الرحیم
Supervisor name: ستار بدر سدخان المالكي
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:
Abstract: Security evaluation algorithms can be considered as one of the most important challenges in computer networks. This is because of the growing data sharing among all clients (users). Therefore, the security level evaluation aspect of cryptography systems is recently appeared to be very important.In this work, evaluations of (RSA and AES) encryption methods are carried out by using Fuzzy Inference System (FIS) and Adaptive Neuro - Fuzzy Inference System (ANFIS). The editor of MATLAB (2013) is employed in this study and it contains a hybrid ANFIS facility between the Artificial Neural Network (ANN) and Fuzzy Logic techniques.First of all, designing and programming software codes for the first encryption method (RSA) have been simulated according to its original algorithm. Consequently, executing the RSA algorithm to collect the data values is implemented for the following parameters (message length, execution time, length of key and cipher message entropy). These parameters have been considered in the proposed approaches. So, the RSA data is used as the bases of the FIS inputs. Then, all the training and testing data values have been collected from the proposed FIS and prepared to be used in the next step (the ANFIS). The number of training samples has been selected to be 100 values by executing special software programs. These values have been utilized as follows : opening the ANFIS editor; loading the training data; determining the main ANFIS parameters and training the data with the least error tolerance. Subsequently, the number of testing samples has been chosen to be also 100 values by implementing special software programs. Hence, the evaluations are observed and the characteristics of the ANFIS which attained the best tested results have been benchmarked. Similar steps to evaluate the RSA by using large key numbers are implemented except of utilizing the parameter (key length) to study the influence of the key value on security evaluations. The proposed FISSecurity evaluation algorithms can be considered as one of the most important challenges in computer networks. This is because of the growing data sharing among all clients (users). Therefore, the security level evaluation aspect of cryptography systems is recently appeared to be very important.In this work, evaluations of (RSA and AES) encryption methods are carried out by using Fuzzy Inference System (FIS) and Adaptive Neuro - Fuzzy Inference System (ANFIS). The editor of MATLAB (2013) is employed in this study and it contains a hybrid ANFIS facility between the Artificial Neural Network (ANN) and Fuzzy Logic techniques.First of all, designing and programming software codes for the first encryption method (RSA) have been simulated according to its original algorithm. Consequently, executing the RSA algorithm to collect the data values is implemented for the following parameters (message length, execution time, length of key and cipher message entropy). These parameters have been considered in the proposed approaches. So, the RSA data is used as the bases of the FIS inputs. Then, all the training and testing data values have been collected from the proposed FIS and prepared to be used in the next step (the ANFIS). The number of training samples has been selected to be 100 values by executing special software programs. These values have been utilized as follows : opening the ANFIS editor; loading the training data; determining the main ANFIS parameters and training the data with the least error tolerance. Subsequently, the number of testing samples has been chosen to be also 100 values by implementing special software programs. Hence, the evaluations are observed and the characteristics of the ANFIS which attained the best tested results have been benchmarked. Similar steps to evaluate the RSA by using large key numbers are implemented except of utilizing the parameter (key length) to study the influence of the key value on security evaluations. The proposed FISSecurity evaluation algorithms can be considered as one of the most important challenges in computer networks. This is because of the growing data sharing among all clients (users). Therefore, the security level evaluation aspect of cryptography systems is recently appeared to be very important.In this work, evaluations of (RSA and AES) encryption methods are carried out by using Fuzzy Inference System (FIS) and Adaptive Neuro - Fuzzy Inference System (ANFIS). The editor of MATLAB (2013) is employed in this study and it contains a hybrid ANFIS facility between the Artificial Neural Network (ANN) and Fuzzy Logic techniques.First of all, designing and programming software codes for the first encryption method (RSA) have been simulated according to its original algorithm. Consequently, executing the RSA algorithm to collect the data values is implemented for the following parameters (message length, execution time, length of key and cipher message entropy). These parameters have been considered in the proposed approaches. So, the RSA data is used as the bases of the FIS inputs. Then, all the training and testing data values have been collected from the proposed FIS and prepared to be used in the next step (the ANFIS). The number of training samples has been selected to be 100 values by executing special software programs. These values have been utilized as follows : opening the ANFIS editor; loading the training data; determining the main ANFIS parameters and training the data with the least error tolerance. Subsequently, the number of testing samples has been chosen to be also 100 values by implementing special software programs. Hence, the evaluations are observed and the characteristics of the ANFIS which attained the best tested results have been benchmarked. Similar steps to evaluate the RSA by using large key numbers are implemented except of utilizing the parameter (key length) to study the influence of the key value on security evaluations. The proposed FISapproach confirmed that the RSA evaluation is successfully implemented to the ANFIS editor.All the previous steps are repeated for the AES encryption method except one difference. That is, the utilized parameters here are the (message length, execution time and cipher message entropy). Basically, two key values are determined for the AES, which equals to 128 bits. Likewise the RSA, the suggested procedures are applied to the AES and the proposed FIS approach confirmed that the AES evaluation is successfully implemented to the ANFIS editor.Finally, comparisons between this study and previous work, and between the RSA and AES are established. In addition, comparisons between the evaluated outcomes of the FIS and ANFIS have been investigated by using two statistical metrics.

خوارزهية التوجيه الهجينة لاتصاللات الماكنة مع ملكنة == Hybriid Routiing Allgoriithm for Machiine to Machiine Communiicatiion

Author name: باسم جميل علي
Supervisor name: سعد طالب حسون الجبوري
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:
Abstract: The wireless communication devices have witnessed rapid growth in the recent years. Such growth and its useful applications led to the appearance of new applications known as "machine - to - machine" (M2M) communications. M2M plays a big role in finding the best hopeful explanation to change the current and the future smart widespread requests. Most of the smart wireless devices may perform as servers, collection of data and/or delivering the data at real time to users in a certain collaborative fashion.M2M communication domain consists of a huge number of tiny nodes and gateway (or sink) that are suffer from suffer from resource constrains like power limitation, storage capacity, radio limitation, data processing, etc.. Thus, it is necessary to find methods to increase node's lifetime as long as possible and consequently the overall sensor network. M2M devices consume considerable amount of energy due to communication process comparing to other process. This process depends on message size and the distance between the sender and the recipient. Thus reducing the packet size and finding a low energy aware routing procedure is necessary to save nodes energy.This thesis adopted compressed sensing (CS) as a modern data compression technique, modified Gossip algorithm as a flat protocol and introduced hybrid Gossip based low energy adaptive clustering hierarchy (LEACH) protocols as a new hybrid routing algorithm. CS combined with LEACH protocol named LEACHCS and the results that are reported from LEACHCS showed that the communication process can be improved in term of the channel bandwidth (B.W) utilization, increasing network throughput and saving node's communication energy.Gossip data aggregation technique is a biologically inspired paradigm of contagion inspired from behavior of the disease infection process. Its procedure is based on the help of neighboring nodes and employs the randomization technique to form a chain of the intermediary nodes (route). The modification of Gossip based on the selection operation of the next node hop. This thesis introduced three versions of modifying Gossip : a) Modify Gossip named (DGossip), in which a chain of intermediary nodes can be formed according to the relative node's energy and relative nodes displacement to the sink instance of randomization technique in the original Gossip. b) The formation of intermediary nodes based on the relative energy of neighbor nodes and nearest node to the source node called EN_Gossip. c) A hybrid of EN_Gossip and EL_Gossip named ENL_Gossip is introduced as a new version. In ENL_Gossip, a chain of intermediary nodes is collected through alternating use of both EN_Gossip first then EL_Gossip starting from the source node till reached the sink.The results showed that the DGossip is significantly better than others in term of the average remaining energy of network and latency time (in terms of number of hops), while ENL_gossip outperforms the others in term of network's live time.A new hybrid algorithm is proposed which combined Gossip as a bio - inspired technique with LEACH as a hierarchical multi - hop routing algorithm called LEACHGossip algorithm. This algorithm uses LEACH for clustering configuration purpose, while Gossip applies for each CH (or normal node) that is away (do m) from the sink (or from its associated CH). The simulation results proved that it outperforms LEACH about more times in terms of congestion between CHs and BS, node still alive and energy saving. Thus, the above mentioned procedures can be considered as efficient communication protocols for M2M communication networks in term of energy saving.

تحديد مكان وهوية المتكلم باستخدام تقنية توجيه حزم الاشارة المحسنة

Author name: علي يعكوب يوسف
Supervisor name: حسين عطية لفتة الخالدي
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:
Abstract: Automatic speech recognition (ASR) systems perform well when using a close - talking microphone, However, many environments (Hands - free) where the use of such microphones is undesirable for reasons of convenience. In a hands - free environment, the noise and reverberation degrade the accuracy of recognition. An enhanced approach using microphone array for speaker localization and enhancement of speech signal input to an automatic speech identification system was proposed. The proposed system using enhanced beamforming technique based on Minimum Variance Distortionless Response (MVDR) for speaker localization with multi - microphone arrays. The strongest output beam signal corresponding to selected microphone array, used for the speaker identification. The identification phase based on using Mel Frequency Cepstrum Coefficient MFCC for feature extraction and enhance LBG algorithm for speaker modeling.Speaker identification accuracy in using proposed method were compared with conventional beamforming method, It was found that the higher recognition accuracy than previous approaches, and in experiments using speech signals that were artificially corrupted by additive noise. The proposed system provided a consistent, improvement in recognition accuracy for several experiments in simulation environments. It is also showing the benefit of usingmicrophone array processing. The localization phase evaluated using SNR, showing enhanced ratio after applying enhanced beamforming that estimate speaker location. The results showing localization accuracy 96.8% and 98.1% recognition accuracy where achieved.

نظام توصيات قائم على الويب لانتشار الاوبئة == Web - Based Recommender System for Spread Epidemics

Author name: حيدر محمد حبيب مجيد
Supervisor name: نبيل هاشم الاعرجي
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:
Abstract: The usage of Online Social Networks, such as Facebook and Twitterbecomes more and more popular in order to exchange and disseminate news andinformation in real - time. Twitter in particular allows the instant dissemination ofshort messages in the form of microblogs to followers. This dissertation exploresand examine the usage of how social networks, such as the microblogging toolTwitter, can help in the detection of spreading epidemics and reducing time delaybetween the emergence of disease and report sick to the health authorities suchas World Health Organization (WHO).Text classification has been used to classify the patients and non - patients(positive / negative). Sentiment Analysis (SA) and Linear Support VectorClassifier (LSVC) have been applied in the classification patients. In thisdissertation, four diseases have examined. Diseases that have most similarity intheir symptoms have been taken in order to classify patients based on theirsymptoms by applying a recommendation system techniques. Symptoms - basedHealthcare Recommender System is new approach in this work. It uses patientsymptominstead of user - item in traditional Collaborative Recommender System.Collaborative Filtering (CF) has been applied in order to recommend whichdisease the patient may has. CF shows an indicator that users on Social Networkshave not enough knowledge to mention all symptoms for specific disease, that’sled to classify patients to more than one disease according to common symptomsthat mentioned by patients.Geolocation of users that classified as patients has been extracted in orderto recommend health authorities that there is a certain area might has a beginningof spread disease. An implicit geocoding of users has been extracted by usingGoogle Maps Geocoding API to avoid neglecting those who don’t have explicitgeolocation.IISuspected areas has been weighted by computing a Confidence Factor(cFactor) of Tweet source whatever it comes from mobile or desktop. cFactorhelp in reducing time consuming into 29% of collecting and processing data.Weighted and Geographic Symptoms - based Recommender (WGSR) model hasbeen created detect, classify and visualize patients on the map.The accuracy of WGSR model reached to %94 in the classification andmore than %80 with the real reports of World Health Organization (WHO) whichrefers as a very good and can be improved for better results.

تطوير التخويل المعتمد على البايومترك لنقل بيانات امنة عبر البيئة السحابية == Developing A Biometric Based Authentication To Secure Transferring Data Via Cloud Environment

Author name: احمد عبد الرضا عباس
Supervisor name: وسام سمير بهية
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:

تقليل الاشعارات الخاطئة عند الكشف عن البرمجيات الخبيثة باستخدام تسلسل ايعازات API == Reducing False Notifications In Malware Detection Using API Calls Sequence

Author name: حسين لفتة حسين
Supervisor name: عباس محسن البكري
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:

طريقة هجينه لاكتشاف وتعقب الكائنات المتحركة في ملف فيديو == A Hybrid Approach for Detection and Tracking of Moving Objects in Video File

Author name: جلال حميد عواد
Supervisor name: عامر صديق الملاح
General topic: Computer Science
Specific topic: Video Processing
Degree: Doctorate
Language: English
University location: Babylon
First pages:

اطار عمل للاستشارة التعاونية والتشخيص عن بعد بالاعتماد على الحوسبة السحابية == on cloud telecollaboration consultation and diagnosis framework based on agent

Author name: امير كاظم هادي
Supervisor name: عباس محسن البكري
General topic: Computer Science
Specific topic: Computer Networking
Degree: Doctorate
Language: English
University location: Babylon
First pages:

نظام مقترح في تمييز الوجوه اعتمادا على عزوم زرنيخ و M-MSSIM == A Proposed System For Face Recognition Based On Zernike Moments And M - Mssim

Author name: اسعد نوري هاشم الشريفي
Supervisor name: زاهر محسن حسين المالكي
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:

تحسين بعض الدوال الفوضوية لتشفير الكلام == An Enhancement Of Some Chaotic Maps For Speech Encryption

Author name: رنا سعد محمد
Supervisor name: ستار بدر سدخان
General topic: Computer Science
Specific topic: Data Security
Degree: Doctorate
Language: English
University location: Babylon
First pages:

تطوير نظام فديو بانورامي واسع الزاوية == Development Of Wide - Angle Video Panoramic System

Author name: كوثر عباس صلال
Supervisor name: عبد المنعم صالح رحمة ابو طبيخ
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:

تصميم نظام ذكي للتنقيب عن البيانات باستخدام قواعد الاقتران == Design An Intelligent System For Data Mining Using Association Rules

Author name: سماهر حسين علي الجنابي
Supervisor name: عباس محسن البكري
General topic: Computer Science
Specific topic: Information Technology
Degree: Doctorate
Language: English
University location: Babylon
First pages:

تحسين انظمة التوصية باستخدام اصطفاف السلاسل == Improving Recommendation System Using Sequence Alignment

Author name: هدى ناجي المعموري
Supervisor name: وسام سمير بهية
General topic: Computer Science
Specific topic: Computer Science
Degree: Doctorate
Language: English
University location: Babylon
First pages:

تطوير مقاييس مقوم تقنيات العلامة المائية للصور الرقمية == Developing Metrics Evaluator For Digital Image Watermarking Techniques

Author name: ميثاق طالب كاطع
Supervisor name: ستار بدر سدخان | سعد طالب حسون
General topic: Computer Science
Specific topic: Image Processing
Degree: Doctorate
Language: English
University location: Babylon
First pages:

علامة مائية قوية في بيئة نظام المعلومات الجغرافية == A Robust Watermark In Geographic Information System Environment

Author name: ماجد جبار جواد الصريفي
Supervisor name: توفيق عبد الخالق عباس الاسدي
General topic: Computer Science
Specific topic: Data Security
Degree: Doctorate
Language: English
University location: Babylon
First pages:
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