A Novel Data Dictionary Learning for Leaf Recognition
Authors/Creators
Description
Automatic leaf recognition via image processing has been greatly important for a number of professionals,
such as botanical taxonomic, environmental protectors, and foresters. Learn an over-complete leaf
dictionary is an essential step for leaf image recognition. Big leaf images dimensions and training images
number is facing of fast and complete data leaves dictionary. In this work an efficient approach applies to
construct over-complete data leaves dictionary to set of big images diminutions based on sparse
representation. In the proposed method a new cropped-contour method has used to crop the training
image. The experiments are testing using correlation between the sparse representation and data
dictionary and with focus on the computing time.
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10319sipij04.pdf
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Additional details
Identifiers
Related works
- Is published in
- 10.5121/sipij.2019.10304 (DOI)
Dates
- Issued
-
2019-06-30Automatic leaf recognition via image processing has been greatly important for a number of professionals, such as botanical taxonomic, environmental protectors, and foresters. Learn an over-complete leaf dictionary is an essential step for leaf image recognition. Big leaf images dimensions and training images number is facing of fast and complete data leaves dictionary. In this work an efficient approach applies to construct over-complete data leaves dictionary to set of big images diminutions based on sparse representation. In the proposed method a new cropped-contour method has used to crop the training image. The experiments are testing using correlation between the sparse representation and data dictionary and with focus on the computing time.
References
- A Novel Data Dictionary Learning for Leaf Recognition