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separates the knowledge required for the recognition from the recognition mechanism (Kontoes et al., 1993) as the its
algorithm passes over rules according to their confidence values, searching for the most suitable land cover (Lee et al.,
1987).
This approach have been applied and studied for crop recognition in several researches (Janssen & Middelkoop , 1992;
Kontoes et al., 1993; Kontoes & Rokos, 1996; Adinarayana & Krishna, 1996). In these studies knowledge-based system
was utilized for the refinement of conventional image-based classification methods and thus was used in a
post-classification process. Nevertheless, high spatial-temporal heterogeneity might be responsible for the limited
utilization of this approach in Mediterranean regions (Shoshany, 2000). This paper examines the potential of the
incorporation of remotely sensed data, GIS information and expert knowledge for crop recognition applied through
knowledge-based classification rules in a post-classification manner in a wide heterogeneous Mediterranean region.
2 Knowledge-Based Crop Classification Method
Presented in this paper a knowledge-based crop recognition refinement of an unsupervised classification. Wheat, four
types of legumes, cotton, sunflower and orchards were to identify in this framework presenting 70% of the overall crops
in Israel. The heterogeneous characteristic of the study area invited two kinds of recognition difficulties. On one hand this
variability entailed several spectral and phenological sub-features for a single crop type and on the other hand several
crops had common sub-features resulting in significant confusion. The ability to unite all sub-features of a single crop and
to overcome confusion between crops demands knowledge about crop spectral/ temporal feature variety and ways
environmental characteristics and agricultural treatments affect them.
2.1 Knowledge acquisition and engineering Soil type map Annual rainfall map
Acquisition of these kinds of knowledge was achieved
through data structuring and a comprehensive learning
5 : ste Multi-temporal
course of the inter-relations existing between the data P
; NDVI images
sources in relation to different crop types. Data Spatial
structuring included integration of imagery properties Database
and digitized soil and rainfall maps (figure 1). The Unsupervised
relations were studied by domain literature, interviews Ground classification
with experts and GIS overlay analysis applied on data SNe IDE m
sources utilizing empirical samples of crop plots chosen Relations Learning &
from ground reference maps. Engineering of retrieved Agkumml & | 3 Generalization PCA properties
relations involved rules generalization and es n (Knowledge acquisition)
formalization and designated for rules base
construction. Y
>
Rules Formalization — Rules sequence Rules
(knowledge engineering) arrangement Base
Figure 1. Rule-base construction procedure
2.1.1 Data structuring
Second-ordered imagery information of NDVI images, multi-spectral PCA and basic classification layer integrated with
digitized rainfall and soil maps composed the database. These components together with agricultural knowledge and GIS
analysis used for extracting the rule-base.
NDVI maps
Multi-temporal NDVI maps covering the central and southern parts of Israel were generated from five Landsat TM
images acquired during 96°-97° growing season in clear sky conditions. À Spot Panchromatic image from June 96’ was
combined with the NDVI images in two stages. Firstly, the NDVI maps were re-sampled to the Spot spatial resolution
(10m). Secondly, Spot edge pixels, were enhanced, coded and reduced from NDVI images in order to reduce overall
image heterogeneity with minimal information loss. The analyzed multi-temporal NDVI images were used as a basis for
traditional unsupervised classifier and as additional data in the knowledge acquisition process for the rule-based
classification.
Isodata unsupervised classified images
Basic categorization of the multi-temporal NDVI maps was conducted by detailed Isodata (Iterative Self-Organizing Data
Analysis) unsupervised classification algorithm. In heterogeneous areas the recognition flexibility of the unsupervised
method makes it an efficient starting point since it enables recognition of sufficient amount of crop sub-features in the
International Archives of Photogrammetry and Remote Sensing. Vol. XXXIII, Part B7. Amsterdam 2000. 281