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Dimensional Analysis and Segmentation of Touching Rice Grains


Affiliations
1 (E & EC Department), Punjab Engineering College University of Technology, Chandigarh, India
2 Punjab Engineering College University of Technology, Chandigarh, India
     

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This paper presents a novel image processing algorithm that has been developed and tested for the accurate segmentation of contacting rice grains in digital images. This algorithm uses general shape properties for initial decision making, then use Erosion and dilation technique for segmented the contacting grains at the point of contact. This approach offers a autious, decisive and reliable segmentation between small sets of contacting rice grains. The algorithm has been applied to test images with success in all cases. Results for contacting rice grains are compared with shape descriptors for non-touching grains. It is found that the impact of segmentation on the shape of target grains is negligible. This algorithm is of benefit for intelligent grain analysis.


Keywords

Dilation, Erosion, Image Processing, Segmentation.
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  • Dimensional Analysis and Segmentation of Touching Rice Grains

Abstract Views: 205  |  PDF Views: 3

Authors

Neelam R. Prakash
(E & EC Department), Punjab Engineering College University of Technology, Chandigarh, India
Abhishek Singhal
Punjab Engineering College University of Technology, Chandigarh, India

Abstract


This paper presents a novel image processing algorithm that has been developed and tested for the accurate segmentation of contacting rice grains in digital images. This algorithm uses general shape properties for initial decision making, then use Erosion and dilation technique for segmented the contacting grains at the point of contact. This approach offers a autious, decisive and reliable segmentation between small sets of contacting rice grains. The algorithm has been applied to test images with success in all cases. Results for contacting rice grains are compared with shape descriptors for non-touching grains. It is found that the impact of segmentation on the shape of target grains is negligible. This algorithm is of benefit for intelligent grain analysis.


Keywords


Dilation, Erosion, Image Processing, Segmentation.