Abstract

The need for automatic object recognition and retrieval have increased rapidly in the last decade. In content-based image retrieval (CBIR) visual cues such as colour, texture, and shape are the most prominent features used. Texture features are not considered as a significant discriminator unless it is integrated with colour features. Colour-based image retrieval uses global and/or local features has proved its ability to retrieve images with a high degree of accuracy. In contrast, shape-based retrieval is still suffering from numerous unsolved problems such as precise edge detection, overlapping objects, and high cost of feature extraction. In this paper, global colour features are utilized to discriminate unrelated images. Furthermore, a novel hybrid approach is proposed, consisting of a combination of boundary-based shape descriptor (BBSD) and region-based shape descriptor (RBSD), image retrieval. An enhanced object boundary detection (EBOD) is proposed, which uses canny edge detector to detect shape boundaries, with morphological opening to remove isolated nodes. Subsequently, morphological closing is utilized to solidify objects within the target image to enhance shape-based features representation. Finally, shape features are extracted and Euclidean distance measure with different threshold values to measure the similarity between feature vectors is adopted. Five semantic categories of WANG image database are selected to test the proposed approach. The results of experiments are promising, when compared with most common related approaches.

Highlights

  • contentbased image retrieval (CBIR) is one of the most enthusiastic research area since 1970

  • WANG database is extensively used in CBIR to test the effectiveness of any CBIR system because of its clear categorization and reasonable size in each category [11]

  • Five semantic categories of WANG database are chosen as shown in table 4

Read more

Summary

Introduction

CBIR is one of the most enthusiastic research area since 1970. It enables us to retrieve images based on visual content rather than textual description. Image databases with thousands or even millions of images are to create, maintain, and manipulate with less cost and high level of efficiency. As stated in [1], colour is one of the most important features to be extracted in any CBIR system. Colour histogram is easy to compute with acceptable level of retrieval accuracy. It lacks to spatial distribution and less efficient in handling noise. Shape descriptor is considered as one of the most significant descriptors that may enhance image based retrieval

Objectives
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call