3 research outputs found

    Plant image retrieval using color, shape and texture features

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    We present a content-based image retrieval system for plant image retrieval, intended especially for the house plant identification problem. A plant image consists of a collection of overlapping leaves and possibly flowers, which makes the problem challenging.We studied the suitability of various well-known color, shape and texture features for this problem, as well as introducing some new texture matching techniques and shape features. Feature extraction is applied after segmenting the plant region from the background using the max-flow min-cut technique. Results on a database of 380 plant images belonging to 78 different types of plants show promise of the proposed new techniques and the overall system: in 55% of the queries, the correct plant image is retrieved among the top-15 results. Furthermore, the accuracy goes up to 73% when a 132-image subset of well-segmented plant images are considered

    Content based image retrieval for identification of plants using color, texture and shape features

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    In this thesis, an application of content-based image retrieval is proposed for plant identification, along with a preliminary implementation. The system takes a plant image as input and finds the matching plant from a plant image database and is intended to provide users a simple method to locate information about their plants. With a larger database, the system might be used by biologists, as an easy way to access to plant databases. Max-flow min-cut technique is used as the image segmentation method to separate the plant from the background of the image, so as to extract the general structure of the plant. Various color, texture and shape features extracted from the segmented plant region are used in matching images to the database. Color and texture analysis are based on commonly used features, namely color histograms in different color spaces, color co-occurrence matrices and Gabor texture maps. As for shape, we introduce some new descriptors to capture the outer contour characteristics of a plant. While color is very useful in many CBIR problems, in this particular problem, it introduces some challenges as well, since many plants just differ in the particular hue of the green color. As for shape and texture analysis, the difficulty stems from the fact that the plant is composed of many leaves, resulting in a complex and variable outer contour and texture. For texture analysis, we tried to capture leaf-level information using smaller shape regions or patches. Patch size is designed to contain a leaf structure approximately. Results show that for 54% of the queries, the correct plant image is retrieved among the top-15 results, using our database of 380 plants from 78 different plant types. Moreover, the tests are also performed on a clean database in which all the plant images have smooth shape descriptors and are among the 380 images. The test results obtained using this clean database increased the top-15 retrieval probability to 68%

    Image retrieval for identifying house plants

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    We present a content-based image retrieval system for plant identification which is intended for providing users with a simple method to locate information about their house plants. A plant image consists of a collection of overlapping leaves and possibly flowers, which makes the problem challenging. We studied the suitability of various well-known color, texture and shape features for this problem, as well as introducing some new ones. The features are extracted from the general plant region that is segmented from the background using the max-flow min-cut technique. Results on a database of 132 different plant images show promise (in about 72% of the queries, the correct plant image is retrieved among the top-15 results)
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