Author/Authors :
كيوان پور، محمدرضا نويسنده دانشكده فني و مهندسي- دانشگاه تربيت مدرس تهران Kayvanpour, Mohammad-Reza , طاولي، رضا نويسنده , , مظفري، سعيد نويسنده ,
Abstract :
Word shape coding (WSC) is a method of document image retrieval (DIR) based on keyword spotting. By
using this method, a word can be recognized in the document image, only by identifying some of the features of the
word. In this paper, a hierarchical word spotting method, namely HWS, is presented for Farsi document image
retrieval through WSC. In HWS method, document images are retrieved by using a new indexing method. In HWS, at
first the words in the document images are shape coded based on topological properties. These features include
number of sub-words, ascenders, descenders, and holes.A new feature that has been used for this paper is dotʹs
position in word. Six features are obtained which are one top dot, two top dots, three top dots and one bottom dot, two
bottom dots, and three bottom dots. Precision of retrieval increases by using these features. Then, all of the shape
codes are indexed by building a tree. Retrieval is done based on keyword query in the tree. The results show that the
proposed technique is very fast for large volumes of documents. Time complexity for successful and non-successful
searching is ) (lognk
O .This value is better than values in ordinal method. Also, time complexity for indexing is
) (lognk
O . The HWS method is tested on Bijankhan database. 87867 common words from this database are used for
building the dictionary. Test results show that average of precision is 0.83 and average recall is 0.94.