CIFOR-ICRAF berfokus pada tantangan-tantangan dan peluang lokal dalam memberikan solusi global untuk hutan, bentang alam, masyarakat, dan Bumi kita

Kami menyediakan bukti-bukti serta solusi untuk mentransformasikan bagaimana lahan dimanfaatkan dan makanan diproduksi: melindungi dan memperbaiki ekosistem, merespons iklim global, malnutrisi, keanekaragaman hayati dan krisis disertifikasi. Ringkasnya, kami berupaya untuk mendukung kehidupan yang lebih baik.

CIFOR-ICRAF menerbitkan lebih dari 750 publikasi setiap tahunnya mengenai agroforestri, hutan dan perubahan iklim, restorasi bentang alam, pemenuhan hak-hak, kebijakan hutan dan masih banyak lagi – juga tersedia dalam berbagai bahasa..

CIFOR-ICRAF berfokus pada tantangan-tantangan dan peluang lokal dalam memberikan solusi global untuk hutan, bentang alam, masyarakat, dan Bumi kita

Kami menyediakan bukti-bukti serta solusi untuk mentransformasikan bagaimana lahan dimanfaatkan dan makanan diproduksi: melindungi dan memperbaiki ekosistem, merespons iklim global, malnutrisi, keanekaragaman hayati dan krisis disertifikasi. Ringkasnya, kami berupaya untuk mendukung kehidupan yang lebih baik.

CIFOR–ICRAF publishes over 750 publications every year on agroforestry, forests and climate change, landscape restoration, rights, forest policy and much more – in multiple languages.

CIFOR–ICRAF addresses local challenges and opportunities while providing solutions to global problems for forests, landscapes, people and the planet.

We deliver actionable evidence and solutions to transform how land is used and how food is produced: conserving and restoring ecosystems, responding to the global climate, malnutrition, biodiversity and desertification crises. In short, improving people’s lives.

Application of combined pixel-based and spatial and spatial-based approaches for improved mixed vegetation classification using ikonos

Ekspor kutipan

Classifying a mosaic of coffee systems, each in a different stage of structural complexity is not obvious when that ranges from monoculture to a complex agro-ecosystem, with various shade and fruit trees mixed in different degrees of density. Distinction into different sub-classes incorporating tree complexity and tree cover, is important as tree density and the generally related amount of litter are important from a soil erosion perspective. In this study, the objective was to classify different coffee garden systems plus several other minor vegetation classes existing in the area using IKONOS in Sumberjaya district, Lampung Province, Indonesia. Pixel-based classification approach was integrated with spatial-based approach to reach an improved classification result. In the supervised pixel-based approach training samples are collected to generate statistical parameters for the classifier to classify the whole image. The spatial-based approach refers to segmentation procedure, known also as object-based classification. Two methods of integration were explored and pure pixel-based-approach was as well conducted for comparison purpose. Results were then tested using ground check data. The methods tested are: pure spectral approach of (a) supervised classification using maximum likelihood classifier, integration with segmentation which was done in two ways, by (b) classifying the segments and by (c) combining the pixel-based classified image with segment image using majority rule. Of all the three methods the combination using majority rule showed the highest overall accuracy. Several points were discussed as feedback to the methods tried as well as to improve the classification result
    Tahun publikasi

    2003

    Penulis

    Widayati A; Verbist B; Meijerink A

    Bahasa

    English

    Kata kunci

    agroforestry, coffee, home gardens, monoculture, vegetation

    Geografis

    Indonesia

Publikasi terkait