Work place: Department of Electronics and Telecommunication, M.E.S. College of Engineering, SPPU, Pune, 411001, India
E-mail: ppranotimane@gmail.com
Website:
Research Interests: Image Processing, Image Manipulation, Robotics, Computer systems and computational processes
Biography
Pranoti P. Mane is currently pursuing her Ph.D. degree in the Department of Applied Electronics at S.G.B.A. University, Amravati, India. She received the B.E. degree from University of Aurangabad, India in 1998 and M.E. degree from S.G.B.A. University, Amravati, India, in 2006, all in Electronics Engineering. She has total teaching experience of more than 17 years. Her research interest includes image processing, signal processing, instrumentation and robotics.
By Pranoti P. Mane Amruta B. Rathi Narendra G. Bawane
DOI: https://doi.org/10.5815/ijigsp.2016.03.08, Pub. Date: 8 Mar. 2016
Content-based image retrieval is the process of recovering the images that are based on their primitive features such as texture, color, shape etc. The main challenge in this type of retrieval is the gap between low-level primitive features and high-level semantic concepts. This is known as the semantic gap. This paper proposes an interactive approach for optimizing the semantic gap. The primitive features used are HSV histogram, local binary pattern histogram, and color coherence vector histogram. The mapping between primitive features of the image and its semantic concepts is done by involving the user in the feedback loop. Proposed primitive feature extraction method shows improved image retrieval results (Average precision 73.1%) over existing methods. We have proposed an innovative relevance feedback technique in which the concept of prominent features is introduced. On the application of the relevance feedback, only prominent features which are having maximum similarity are utilized. This method reduces the feature length and increases the efficiency. Our own interactive approach for relevance feedback is not only computationally simple and fast but also shows improvement in the retrieval of semantically meaningful relevant images as we go on increasing the iterations.
[...] Read more.By Pranoti P. Mane Narendra G. Bawane
DOI: https://doi.org/10.5815/ijigsp.2016.01.08, Pub. Date: 8 Jan. 2016
Content-based image retrieval (CBIR) is broadly applicable for searching digital images from a gigantic database. Images are retrieved by their primitive visual contents such as color, texture, shape, and spatial layout. The approach presented in this paper utilizes structural connections within an image by integrating textured color descriptors and structure descriptors to retrieve semantically significant images. The retrieval results were obtained by applying the HSV histogram, color coherence vector, and local binary pattern histogram to the standard database of Wang et al., which has 1000 images of 10 different semantic categories. Euclidean distance was used to find the similarity between the query image and database images. This method was evaluated against different methods based on edge histogram descriptors, color structure descriptors, color moments, the color histogram, the HSV histogram, Tamura features, edge descriptors, geometrical shape attributes, and statistical properties such as mean, variance, skewness, and kurtosis. Retrieval results obtained using the proposed methods demonstrated a significant improvement in the average precision (73.8% and 73.1%) compared with those obtained using other existing retrieval methods.
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