Application of Sparse Coded SIFT Features for Classification of Plant Images

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Author(s)

Suchit Purohit 1,* Savita R. Gandhi 1

1. Department of Computer Science Gujarat University Ahmedabad, India

* Corresponding author.

DOI: https://doi.org/10.5815/ijigsp.2017.10.06

Received: 26 May 2017 / Revised: 4 Jun. 2017 / Accepted: 15 Jun. 2017 / Published: 8 Oct. 2017

Index Terms

SIFT, Sparse Coding, Plant Species, Content based retrievel, Spatial Pyramid matching, HSV color space, Texture fetaures extraction

Abstract

Automated system for plant species recognition is need of today since manual taxonomy is cumbersome, tedious, time consuming, expensive and suffers from perceptual biasness as well as taxonomic impediment. Availability of digitized databases with high resolution plant images annotated with metadata like date and time, lat long information has increased the interest in development of automated systems for plant taxonomy. Most of the approaches work only on a particular organ of the plant like leaf, bark or flowers and utilize only contextual information stored in the image which is time dependent whereas other metadata associated should also be considered. Motivated from the need of automation of plant species recognition and availability of digital databases of plants, we propose an image based identification of species of plant when the image may belong to different plant parts such as leaf, stem or flower, fruit , scanned leaf, branch and the entire plant. Besides using image content, our system also uses metadata associated with images like latitude, longitude and date of capturing to ease the identification process and obtain more accurate results. For a given image of plant and associated metadata, the system recognizes the species of the given plant image and produces an output that contains the Family, Genus, and Species name. Different methods for recognition of the species are used according to the part of the plant to which the image belongs to. For flower category, fusion of shape, color and texture features are used. For other categories like stem, fruit, leaf and leafscan, sparsely coded SIFT features pooled with Spatial pyramid matching approach is used. The proposed framework is implemented and tested on ImageClef data with 50 different classes of species. Maximum accuracy of 98% is attained in leaf scan sub-category whereas minimum accuracy is achieved in fruit sub-category which is 67.3 %.

Cite This Paper

Suchit Purohit, Savita R. Gandhi," Application of Sparse Coded SIFT Features for Classification of Plant Images", International Journal of Image, Graphics and Signal Processing(IJIGSP), Vol.9, No.10, pp. 50-59, 2017. DOI: 10.5815/ijigsp.2017.10.06

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