Abstract
Information retrieval can be visualized as the extraction of the desired information from the flooded resources that spread over world wide web. Image retrieval is the fundamental and critical problem that arises in the retrieval activities. In this regard, it is considered to be a challenging task which requires utmost care. Diverse characteristics of data such as noisy, heterogeneity impose a great barrier over image retrieval applications. This chapter aims to come up with a state-of-the-art approach for overcoming these problems by clubbing together widely recognized deep architecture along with natural language processing. This novel design methodology utilizes the latent query features, deep belief network, restricted Boltzmann machine for learning tasks. This collaborative work can be used to reduce the epoch in the learning periods whereas the rest of the methods fail to achieve the constraints.
Reference9 articles.
1. Hodge & Austin. (2001). A comparison of a novel neural spell checker and standard spell checking algorithms. Pattern Recognition, 35(11), 2571–2580.
2. Image Information Retrieval: An Overview of Current Research;A. G.Abby;Informing Science,2000
3. An empirical investigation of user term feedback in text-based targeted image search
4. Representational Power of Restricted Boltzmann Machines and Deep Belief Networks