بھٹو کیوں زندہ ہے ؟
یہ محبت کی کہانی نہیں مرتی لیکن
لوگ کردار نبھاتے ہوئے مر جاتے ہیں
اردو اور ہندی کا لسانی اشتراک و افتراق Initially was only language used to express human ideas. In every age, along with customs and traditions, language also went through stages of evaluation. That is why language of each region is unique. This uniqueness of languages is of its identity. Like human beings, languages also have their own families, and different languages grow as sub- branches of language family. They flourish and sometimes thrive and come to life through process of evolution. When some languages die out. Urdu and Hindi also belong to large languages families. They have a deep relationship. And speaking of same relationship, some tinkers do not separate them from each other. When it sometimes thinkers, there is difference between in the two. At a glance, we will mention the linguistic similarities and difference between Urdu and Hindi. Where are places and where there is difference between them, but all of them are mentioned here.
Textual information embedded in multimedia can provide a vital tool for indexing and retrieval. Text extraction process has a lot of inherent problems due to the variation in font sizes, color, backgrounds and resolution. Text detection, localization and tracking are the most challenging phases of the text extraction process whereas text extraction results are highly dependent upon these phases. This dissertation focuses on the text detection, localization and tracking because of their very fundamental importance. A bio-inspired text detection, localization and tracking is developed and presented in the dissertation. Anthropocentric approach of text detection is studied and is mathematically modeled to design a text extraction process. A novel text segmentation method is proposed covering huge range of text scales, colors and font styles. Segmentation procedure consists of adopted K-means clustering and a fuzzy based perceptual merging process. Two effectual feature vectors are introduced for the classification of the text and non-text objects. First feature vector is based upon the human text detection system and is mathematically represented by the Radon transform of the text candidate objects. Second feature vector is derived from the detailed geometrical analysis of the text contents. Union of two feature vectors is used for the classification of text and non-text objects using Support vector machine (SVM). Fuzzy based text tracking mechanism is also introduced in the research that can handle static as well as dynamic text appearing in videos. The dynamic text includes the simple animations like vertical and horizontal scrolling, as well as the complex ones like random movement, scale change and zoom in/out. ii Text detection and localization results are evaluated on three publicly available datasets namely ICDAR 2011, ICDAR 2013 and IPC-Artificial text. Moreover, results are compared with state of the art techniques. Comparison demonstrates the superiority of the presented research. Text tracking dataset is also developed and proposed tracking algorithm is tested on the dataset that demonstrates the applicability of the proposed tracking technique.