Facial emoji recognition is a human-computer interaction system. In recent times, automatic face recognition or facial expression recognition has attracted increasing attention from researchers in psychology, computer science, linguistics, neuroscience, and similar fields. Facial emoji recognizer is an end user application which detects the expression of the person in the video being captured by the camera. The smiley relevant to the expression of the person in the video is shown on the screen which changes with the change in the expressions. Facial expressions are important in human communication and interactions. Also, they are used as an important tool in studies about behavior and in medical fields. Facial emoji recognizer provides a fast and practical approach for non-meddlesome emotion detection. The purpose was to develop an intelligent system for facial based expression classification using CNN algorithm. Haar classifier is used for face detection and CNN algorithm is utilized for the expression detection and giving the emoticon relevant to the expression as the output.
Phishing is a most popular and dangerous cyberattack in the world of internet. One of the most common attacks in cyber security is to access the personal information of internet users through "Phishing Website". The major element through which hacker can do this job is through URL. Hacker creates an almost replica of original URL in which there is a very small difference, generally not revealed without keen observation. By pipelining various machine learning algorithms, the proposed model aims to recognize the important features to classify the URL using a recursive feature elimination process. In this work the data set of various URL records has been collected with 112 features including one target value. In this work a Machine Learning based model is proposed to identify the significant features, used to classify a URL, the wrapper method recursive feature elimination compares different bagging and boosting machine learning approaches .Ensemble algorithms, Bootstrap Aggregation Algorithms, Boosting and stacking algorithms are used for feature selection. The proposed work has five sections: work on the pre-processing phase, finding the relation between the features of the dataset, automatic selection of number of features using Extra Tree Classifier, comparison of the various ensemble algorithm and finally generates the best features for URL analysis. This paper, designs meta learner with XG BOOST classifier as base classifier and achieved an accuracy of 93% Out of 112 features, this model has performed an extensive comparative study on feature selection and identified 29 features as core features by performing URL analysis.
The term Big data is a large data sets those outgrow the simple kind of database and data handling design. We designed prototype of website phishing detection solution to address the requirements for both effective and efficient phishing detection machine learning big data allows us to dig into a tremendous amount of data that fix the problem and extract predictive signals for the phishing problem. As the cyber security problems grows many types of phishing activities may arises bid data analytics is pretty helpful in identifying various phishing threats of suppliers by scanning various data roots such as personal contacts service level agreements exploring various unstructured data sources log reports and big data analysis highly suitable for analyzing. Our research work presents big data analytics that aims to prevent malicious email notifications & phishing from web service
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