Other language title :
ﺗﺮﮐﯿﺐ وﯾﮋﮔﯿﻬﺎي رﻧﮕﯽ و ﺷﺒﮑﻪﻫﺎي ﻋﺼﺒﯽ ﻣﺼﻨﻮﻋﯽ ﺑﺮاي ﺗﺸﺨﯿﺺ ﮔﻠﻬﺎي زﻋﻔﺮان در ﻣﺰرﻋﻪ
Title of article :
Integration of Color Features and Artificial Neural Networks for In-field Recognition of Saffron Flower
Author/Authors :
JAFARI, A Department of Mechanics of Agricultural Machinery - College of Agriculture - Shiraz University , BAKHSHIPOUR, A Department of Mechanics of Agricultural Machinery - College of Agriculture - Shiraz University , HEMMATIAN, R Agricultural Engineering Department - Tarbiat Modarres University
Pages :
14
From page :
1
To page :
14
Abstract :
-Manual harvesting of saffron as a laborious and exhausting job; it not only raises production costs, but also reduces the quality due to contaminations. Saffron quality could be enhanced if automated harvesting is substituted. As the main step towards designing a saffron harvester robot, an appropriate algorithm was developed in this study based on image processing techniques to recognize and locate saffron flowers in the field. Color features of the images in HSI and YCrCb color spaces were used to detect the flowers. High pass filters were used to eliminate noise from the segmented images. Partial occlusion of flowers was modified using erosion and dilation operations. Separated flowers were then labeled. The proposed flower harvester was to pick flowers using a vacuum snapper. Therefore, the center of the flower area was calculated by the algorithm as the location of the plant to be detected by the harvesting machine. Correct flower detection of the algorithm was measured using natural images comprising saffron, green leaves, weeds and background soil. The recognition algorithm’s accuracy to locate saffron flowers was 96.4% and 98.7% when HSI and YCrCb color spaces were used. Final decision making subroutines utilize artificial neural networks (ANNs) to increase the recognition accuracy. A correct detection rate of 100% was achieved when the ANN approach was employed.
Farsi abstract :
ﭼﮑﯿﺪه- ﺑﺮداﺷﺖ دﺳﺘﯽ زﻋﻔﺮان ﯾﮏ ﮐﺎر دﺷﻮار و ﺧﺴﺘﻪ ﮐﻨﻨﺪه ﻧﻪ ﺗﻨﻬﺎ ﻣﻮﺟﺐ اﻓﺰاﯾﺶ ﻫﺰﯾﻨﻪﻫﺎي ﺗﻮﻟﯿﺪ ﻣﯽ ﮔﺮدد ﺑﻠﮑﻪ در اﺛﺮ آﻟﻮدﮔﯽ، ﻣﻮﺟﺐ ﮐﺎﻫﺶ ﮐﯿﻔﯿﺖ آن ﻧﯿﺰ ﻣﯽﺷﻮد. درﺻﻮرﺗﯽ ﮐﻪ ﺑﺮداﺷﺖ ﺧﻮدﮐﺎر زﻋﻔﺮان ﺟﺎﯾﮕﺰﯾﻦ روش ﮐﻨﻮﻧﯽ ﺷﻮد ﮐﯿﻔﯿﺖ زﻋﻔﺮان ارﺗﻘﺎء ﺧﻮاﻫﺪ ﯾﺎﻓﺖ. در اﯾﻦ ﺗﺤﻘﯿﻖ، ﺑﻪ ﻋﻨﻮان اوﻟﯿﻦ ﻣﺮﺣﻠﻪ از ﻃﺮاﺣﯽ ﯾﮏ روﺑﺎت ﺑﺮداﺷﺖ زﻋﻔﺮان، اﻟﮕﻮرﯾﺘﻢ ﻣﻨﺎﺳﺒﯽ ﺑﺮاي ﺗﺸﺨﯿﺺ و ﻣﮑﺎن ﯾﺎﺑﯽ ﮔﻠﻬﺎي زﻋﻔﺮان ﺑﺮ اﺳﺎس ﭘﺮدازش ﺗﺼﺎوﯾﺮ در ﻣﺰرﻋﻪ اراﺋﻪ ﺷﺪ. از وﯾﮋﮔﯽ ﻫﺎي رﻧﮕﯽ ﺗﺼﺎوﯾﺮ در ﻓﻀﺎﻫﺎي رﻧﮕﯽ HSI ،RGB و YCrCb ﺑﻪ ﻣﻨﻈﻮر ﺗﺸﺨﯿﺺ ﮔﻠﻬﺎ اﺳﺘﻔﺎده ﮔﺮدﯾﺪ. ﺑﺮاي ﺣﺬف ﻧﻮﻓﻪﻫﺎي ﺗﺼﺎوﯾﺮ ﺟﺪاﺳﺎزي ﺷﺪه، از ﻓﯿﻠﺘﺮﻫﺎي ﺑﺎﻻﮔﺬر اﺳﺘﻔﺎده ﺷﺪ. اﻧﺴﺪاد ﺟﺰﺋﯽ ﮔﻠﻬﺎ ﺑﺎ ﻋﻤﻠﯿﺎت ﺳﺎﯾﺶ و ﮔﺴﺘﺮش اﺻﻼح ﺷﺪ. ﺳﭙﺲ ﮔﻠﻬﺎي ﺟﺪاﺷﺪه ﻋﻼﻣﺘﮕﺬاري ﺷﺪﻧﺪ. ﭼﻨﯿﻦ در ﻧﻈﺮ ﮔﺮﻓﺘﻪ ﺷﺪ ﮐﻪ ﻣﺎﺷﯿﻦ ﺑﺮداﺷﺖ ﮔﻞ ﭘﯿﺸﻨﻬﺎد ﺷﺪه ﺑﺎ ﯾﮏ رﺑﺎﯾﻨﺪه ﻣﮑﺸﯽ اﻗﺪام ﺑﻪ ﭼﯿﺪن ﮔﻠﻬﺎ ﻧﻤﺎﯾﺪ. ﺑﻨﺎﺑﺮاﯾﻦ ﻣﺮﮐﺰ ﺳﻄﺢ ﮔﻞ، ﺑﻌﻨﻮان ﻣﻮﻗﻌﯿﺖ ﮔﯿﺎه ﮐﻪ ﻣﯽﺑﺎﯾﺴﺖ ﺗﻮﺳﻂ ﻣﺎﺷﯿﻦ ﺑﺮداﺷﺖ ﺗﺸﺨﯿﺺ داده ﺷﻮد ﺗﻮﺳﻂ اﻟﮕﻮرﯾﺘﻢ ﻣﺤﺎﺳﺒﻪ ﮔﺮدﯾﺪ. ﺗﺸﺨﯿﺺ ﺻﺤﯿﺢ اﻟﮕﻮرﯾﺘﻢ ﺑﺎ ﺗﺼﺎوﯾﺮ ﻃﺒﯿﻌﯽ ﺷﺎﻣﻞ زﻋﻔﺮان، ﺑﺮﮔﻬﺎي ﺳﺒﺰ، ﻋﻠﻒ ﻫﺎي ﻫﺮز و ﺧﺎك زﻣﯿﻨﻪ، اﻧﺪازهﮔﯿﺮي ﺷﺪ. دﻗﺖ ﺗﺸﺨﯿﺺ اﻟﮕﻮرﯾﺘﻢ در ﻣﮑﺎن ﯾﺎﺑﯽ ﮔﻠﻬﺎ ﻫﻨﮕﺎﻣﯽ ﮐﻪ ﻓﻀﺎيHSI و YCrCb ﻣﻮرد اﺳﺘﻔﺎده ﻗﺮار ﮔﺮﻓﺘﻨﺪ، ﺑﻪ ﺗﺮﺗﯿﺐ ﺑﺮاﺑﺮ 96/4 % و 98/7% ﺑﻮد. زﯾﺮروال ﻫﺎي ﻧﻬﺎﯾﯽ ﺗﺼﻤﯿﻢﮔﯿﺮي از ﺷﺒﮑﻪﻫﺎي ﻋﺼﺒﯽ ﻣﺼﻨﻮﻋﯽ اﺳﺘﻔﺎده ﻣﯽﮐﻨﺪ ﺗﺎ دﻗﺖ ﺗﺸﺨﯿﺺ را اﻓﺰاﯾﺶ دﻫﺪ. ﻫﻨﮕﺎﻣﯽ ﮐﻪ ﺷﺒﮑﻪ ﻫﺎي ﻋﺼﺒﯽ ﺑﻪ ﮐﺎر ﮔﺮﻓﺘﻪ ﺷﺪﻧﺪ ﻧﺮخ ﺗﺸﺨﯿﺺ ﺻﺤﯿﺢ 100% ﺑﻪ دﺳﺖ آﻣﺪ.
Keywords :
Artificial neural networks , Saffron , Machine vision , Harvester
Journal title :
Astroparticle Physics
Serial Year :
2014
Record number :
2469069
Link To Document :
بازگشت