Classification of tissue culture segments by colour machine vision
1993
Alchanatis, V. | Peleg, K. | Ziv, M.
Tissue culture techniques are finding increasingly widespread applications for cloning of many plants. Protocols for mass propagation of many species have been developed, but in spite of its advantages, large-scale commercial plant propagation by tissue cultures is largely limited to ornamental plants. This is due mainly to the intensive killed labour required for subculturing the propagules and in transferring individual shoots or plantlets into and out of culture containers. In order to cut down the production costs, a certain degree of automation is essential. A cost effective approach for automation is proposed, whereby tissue culture plantlets are chopped into approximately uniformly sized segments, on a conveying production line while using colour computer vision for identifying and locating the number and positions of propagation organs, in images of the plantlet segments. Plantlet segments without propagation organs are rejected, while properly cut segments with viable buds or shoots are automatically selected for subculturing. In this paper, some initial results of this approach are reported, in which stationary images of manually pre-cut potato plantlet segments were analysed and classified. Using colour machine vision and a Neural Networkbased classifier, a basis was laid for a practical system, which may be used for automatic classification of tissue culture segments of potato plantlets. Instead if the conventional use of black and white cameras and geometric features, colour features only are used together with colour frame manipulation capabilities, which are now available in most commercial imaging boards. This facilitates accurate, high-speed classification of plantlet images.
Afficher plus [+] Moins [-]Mots clés AGROVOC
Informations bibliographiques
Cette notice bibliographique a été fournie par National Agricultural Library
Découvrez la collection de ce fournisseur de données dans AGRIS