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LA502 Special Studies Remote Sensing Elements of Image Interpretation Dr. Ragab Khalil Department of Landscape Architecture Faculty of Environmental Design King AbdulAziz University Room 103 Overview Introduction Targets Manual versus digital processing Elements of visual interpretation Dr. Ragab Khalil KAAU - FED LA502: RS 2/25 Introduction In order to take advantage of and make good use of remote sensing data, we must be able to extract meaningful information from the imagery. This brings us to the topic of discussion in this lecture and the next lectures - interpretation and analysis - the sixth element of the remote sensing process which we defined in Lecture 2. Dr. Ragab Khalil KAAU - FED LA502: RS 3/25 1

Interpretation Interpretation and analysis of remote sensing imagery involves the identification and/or measurement of various targets in an image in order to extract useful information about them. Dr. Ragab Khalil KAAU - FED LA502: RS 4/25 Targets Targets in remote sensing images may be any feature or object which can be observed in an image, and have the following characteristics: Targets may be a point, line, or area feature. They can have any form like: bus, plane, bridge or roadway, large expanse of water or a field. The target must be distinguishable; it must contrast with other features around it in the image. Dr. Ragab Khalil KAAU - FED LA502: RS 5/25 Visual interpretation Much interpretation and identification of targets in remote sensing imagery is performed manually or visually, i.e. by a human interpreter. independent of what type of sensor was used to collect the data and how the data were collected. For analog or digital format Dr. Ragab Khalil KAAU - FED LA502: RS 6/25 2

Manual or digital Manual interpretation Dates back to the early beginnings of remote sensing. Requires little, if any, specialized equipment Limited to analyzing only a single channel of data or a single image at a time Subjective process, meaning that the results will vary with different interpreters. Digital processing More recent with the advent of digital recording of remote sensing data and computer. Requires specialized, and often expensive, equipment More amenable to handling complex images of several or many channels Objective, based on the manipulation of digital numbers in a computer. Dr. Ragab Khalil KAAU - FED LA502: RS 7/25 Manual or digital Both methods have their merits. In most cases, a mix of both methods is usually employed when analyzing imagery. In fact, the ultimate decision of the utility and relevance of the information extracted at the end of the analysis process, still must be made by humans. Dr. Ragab Khalil KAAU - FED LA502: RS 8/25 The visual elements Recognizing targets is the key to interpretation and information extraction. Observing the differences between targets and their backgrounds involves comparing different targets based on any, or all, of the visual elements of: tone, shape, size, pattern, texture, shadow, and association Dr. Ragab Khalil KAAU - FED LA502: RS 9/25 3

Tone Tone refers to the relative brightness or color of objects in an image. Generally, tone is the fundamental element for distinguishing between different targets or features. Variations in tone also allows the elements of shape, texture, and pattern of objects to be distinguished. Dr. Ragab Khalil KAAU - FED LA502: RS 10/25 Tone Dr. Ragab Khalil KAAU - FED LA502: RS 11/25 Shape Shape refers to the general form, structure, or outline of individual objects. Shape can be a very distinctive clue for interpretation. Straight edge shapes typically represent urban or agricultural (field) targets, while natural features, such as forest edges, are generally more irregular in shape, except where man has created a road or clear cuts. Farm or crop land irrigated by rotating sprinkler systems would appear as circular shapes. Dr. Ragab Khalil KAAU - FED LA502: RS 12/25 4

Shape Dr. Ragab Khalil KAAU - FED LA502: RS 13/25 Size Size of objects in an image is a function of scale. It is important to assess the size of a target relative to other objects in a scene, as well as the absolute size. A quick approximation of target size can direct interpretation to an appropriate result more quickly. For example, for zones of land use, large buildings such as factories or warehouses would suggest commercial property, whereas small buildings would indicate residential use. Dr. Ragab Khalil KAAU - FED LA502: RS 14/25 Size Dr. Ragab Khalil KAAU - FED LA502: RS 15/25 5

Pattern Pattern refers to the spatial arrangement of visibly discernible objects. Typically an orderly repetition of similar tones and textures will produce a distinctive and ultimately recognizable pattern. Orchards with evenly spaced trees, and urban streets with regularly spaced houses are good examples of pattern. Dr. Ragab Khalil KAAU - FED LA502: RS 16/25 Pattern Dr. Ragab Khalil KAAU - FED LA502: RS 17/25 Texture Texture refers to the arrangement and frequency of tonal variation in particular areas of an image. Rough textures is where the grey levels change abruptly in a small area, e.g. forest canopy Smooth textures would have very little tonal variation, e.g. fields, asphalt, or grasslands. Texture is one of the most important elements for distinguishing features in radar imagery. Dr. Ragab Khalil KAAU - FED LA502: RS 18/25 6

Texture Dr. Ragab Khalil KAAU - FED LA502: RS 19/25 Shadow Shadow is also helpful in interpretation as it may provide an idea of the profile and relative height of a target or targets which may make identification easier. However, shadows can also reduce or eliminate interpretation in their area of influence. Shadow is also useful for enhancing or identifying topography and landforms, particularly in radar imagery. Dr. Ragab Khalil KAAU - FED LA502: RS 20/25 Shadow Dr. Ragab Khalil KAAU - FED LA502: RS 21/25 7

Association Association takes into account the relationship between other recognizable objects or features in proximity to the target of interest. The identification of features that one would expect to associate with other features may provide information to facilitate identification. for example, commercial properties associated with major transportation routes. Residential areas associated with schools, playgrounds. Bridges associated with revers. Dr. Ragab Khalil KAAU - FED LA502: RS 22/25 Association Dr. Ragab Khalil KAAU - FED LA502: RS 23/25 The visual elements tone, shape, size, pattern, texture, shadow, association Dr. Ragab Khalil KAAU - FED LA502: RS 24/25 8

Example Landsat Thematic Mapper (TM) bands 5,4,3 displayed as R,G,B) Dr. Ragab Khalil KAAU - FED LA502: RS 25/25 9