Peer-reviewed articles 17,970 +



Title: WEED SPECIES IMAGE RECOGNITION USING DEEP LEARNING TECHNIQUE FOR SELECTIVE SPOT SPRAYING

WEED SPECIES IMAGE RECOGNITION USING DEEP LEARNING TECHNIQUE FOR SELECTIVE SPOT SPRAYING
F. Marin;G. Gurau; C.Gurau; M.Marin
1314-2704
English
20
2.1
Application of image processing recognition in the agricultural field is a difficult and
intensive task. Recent years developments of technologies such as GPUs (Graphics
Processing Units) and the fast development of artificial intelligence algorithms allows
the reliability of using computer vision technology to be used for recognition of plants,
including weeds, ensuring the efficiency of intelligent agricultural systems. Computer
vision technology uses a camera and a computer to identify and measure objects in the
scene. With the development of computer vision algorithms , such technology has been
taken into account for the use in agriculture. Intelligent weed control systems are used
to reduce herbicide usage as it allows more efficient selective spraying to weed targets.
Minimizing the use of chemicals would translate in a low quantity of chemicals used
and also in important economic impact. Development of intelligent agricultural spray
will reduce use of herbicides and improve productivity. Detection and classification of
weed using computer vision algorithm is one important step in developing industry
acceptance of intelligent weed control technology. In this paper a deep learning
technique is used in order to be used along with computer vision to identify weeds. The
emerging technology of deep learning for object detection and classification needs to
consider several factors such as the optical system, scene variability, negative samples,
training data set, position relative to the weeds positions and 3d dimensions, labelling.
Image processing application to agriculture implies special technical difficulties such as
light variation, dust presence. The trained data set must match the target application
morphology concerning leafs as the same weeds have different morphology depending
on its age. The majority of current weed species classification pose unique challenges
concerning computer vision and training using big data sets .
conference
20th International Multidisciplinary Scientific GeoConference SGEM 2020
20th International Multidisciplinary Scientific GeoConference SGEM 2020, 18 - 24 August, 2020
Proceedings Paper
STEF92 Technology
International Multidisciplinary Scientific GeoConference-SGEM
SWS Scholarly Society; Acad Sci Czech Republ; Latvian Acad Sci; Polish Acad Sci; Russian Acad Sci; Serbian Acad Sci & Arts; Natl Acad Sci Ukraine; Natl Acad Sci Armenia; Sci Council Japan; European Acad Sci, Arts & Letters; Acad Fine Arts Zagreb Croatia; C
419-424
18 - 24 August, 2020
website
cdrom
7015
computer vision; intelligent agriculture; deep learning; computational
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