With the proliferation of the document corpora (commonly called as HTML documents or web pages) on the WWW, efficient ways of exploring relevant documents are of increasing importance [4, 8]. The key challenge lies in tackling the sheer volume of documents on the Web and evaluating relevancy for such a huge number. Efficient exploration needs a web crawler that can semantically understand and predict the domain of the web page through analytical processing. This will not only facilitate efficient exploration but also help in the better organization of the web content. As a search engine classifies the Search results by keyword matches, link analysis and other such mechanisms, the paper proposes a solution to the domain identification problem by finding keywords or key terms that are representative of the page's content through the elements like <META> and <TITLE> in the HTML structure of the webpage [11]. This paper proposes a two-step framework that automatically first identifies the domain of the specified web page and with the thus obtained domain information, classifies the web content according to the different pre- specified categories. The former uses the various HTML elements present in the web page while the latter is achieved using Artificial Neural Networks (ANN).