Wednesday, June 5, 2019
Digital image processing
Digital appearing treatVision is the most dynamic of all our senses since it provides us with a commodious amount of information about what surrounds us. It is not surprising that an ancient Chinese proverb that quotes A picture is worth a thousand words is notwithstanding widely utilize. All this information is valuable for simple procedures (for example planning our everyday activities), but similarly for more complex emergencees as the development of our perception. At the level of social organization, chassiss argon also primal as a means of transmitting information, and almost all of todays media atomic number 18 bagd on our heap. The enormous amount of visual information and the need for its processing, lead scientists and technicians towards research in order to discover a means for digital delineation terminus and processing using computers. This effort resulted in a new Information Engineering Industry called Digital see Processing and synopsis. This indus try began to grow cardinal years ago. However, it has shown a dynamic development, especially during the most recent years and it is considered a science and technology with a promising future and m whatsoever potential. As the title indicates, Digital Image Processing is concentrated on digital images and their processing by a computer. Therefore, both the input and output of this process are digital images. Digital image processing can be apply for various reasons improvement of the quality of images, filtering of noise cause by transmission, compression of image information, image storage and digital transmission. On the some other hand, digital image depth psychology deals with the description and erudition of the content of an image. This description is usually symbolic. Therefore, the input when it comes to digital image analysis, is a digital image and the output is a symbolic description. Image analysis principally tries to mimic homophile vision. Therefore, an identica l term which is often used is Computer Vision. It has to be underlined that computer vision is a complex neuro-physiological mechanics driven by upper level knowledge (high level vision). The characteristics of this mechanism are not known and existing mathematical models are yet inadequately accurate. As a result, it is difficult to simulate high level vision by a computer. For this reason, the methods used for image analysis when it comes to machine vision and human vision vary significantly. Image analysis is easier in the case of applications where the environment, objects and fire conditions are fixed. This is usually the case of a mathematical product process in industry. The branch of computer vision which is used in industry is called Robotic Vision. The analysis is much more difficult in applications where the environment is unknown and there is a large number of objects or the different objects are unclear or difficult to separate (for example in biomedical applications or in outdoor / natural scenes). In such applications, even experts find it difficult to fleck objects. For these reasons, it is still difficult to obtain a general image analysis system. Most existing systems are designed for specialised applications.OTHER RELATED look into AREASDigital image processing and analysis are related to various other scientific theatres because of their subject of research. Recently, there is a tendency, at least in terms of applications, for digital image processing to become an interdisciplinary industry. slightly related research areas areDigital Signal ProcessingGraphics chemical formula RecognitionArtificial IntelligenceTelecommunications and MediaMultimedia SystemsWe will examine the relation of each of these areas with digital image processing and image analysis independently, since the way they are related is not very clear.Digital Image Processing Vs Digital Signal ProcessingEvery image can be described as a two-dimensional request. Therefo re, for the analysis and processing of digital images all the techniques of digital signal processing can be used. This area provides the theoretical and programming base for image processing.Digital Image Processing Vs GraphicFundamentally, the subject of graphic is digital synthesis. Therefore, the input is a symbolic description and the output is a digital image. For this purpose a geometric modelling of the display object takes place, as well as a digital description of the lighting conditions and digital production of the objects illuminants in the assumed position of the camera.Digital Image Processing Vs Pattern RecognitionPattern recognition deals with the classification of an object to a class of models (class pattern). For example, hard to recognize whether a new object is a resistor, a capacitor, or an integrated circuit. For this purpose, an object has to be described using certain characteristics (features), mostly rime (for example diameter and area), and indeed it can be classified based on these characteristics.Digital Image Processing Vs Artificial IntelligenceArtificial intelligence and image understanding are areas where a symbolic mold of an image is converted to another more complex representation or a representation more easily comprehensible to humans. Usually, techniques for representation of human knowledge (knowledge representation) and reasoning (inference) are used for this purpose. The analysis of a scene requires higher cognitive processes and that is wherefore it is also known as high-level vision. On the other hand, image processing is more related to the lower levels of vision, that take place in the human eye and optic nerve and as a result it is also known as low level vision.Digital Image Processing Vs TelecommunicationsThe celestial orbit of telecommunications is related to digital image transmission in telecommunication networks that transmit voice and data. The resulting networks are called Integrated Services Digit al Networks (ISDN). A key fuss concerning image transmissions is the compression of the images content, since a colour image requires about 750 Kbytes for its description. The construction of special algorithms for coding and decoding is also required. Digital image processing is also directly connected to the HDTV (High Definition TV). Its basic aim is the compression of the vast amount of information and the improvement of the quality of images that are received.Digital Image Processing Vs New Generation DatabasesThe new generation of databases includes image, signal (voice) and data storage. In this field, digital image processing deals with image coding and analysis by finding smart ways of recuperation (retrieval) of images.DIFFERENT AREAS OF DIGITAL IMAGE PROCESSINGDigital image processing includes several areas that are closely related. Some of those areas are mentioned belowCapture of the imageDigital Filtering of the imageEdge DetectionRegion SegmentationShape Description Texture Analysis cause AnalysisStereoscopyIt is logical that the description of all these areas is not possible in a short presentation. However, the literature is so wide that several books would be needed in order to describe adequately the digital image processing. Moreover, image processing is a cognitive area that makes extensive use of specialized mathematical, which makes it difficult to be presented to an audience. For this reason the description of the area it is purely qualitative.Capture of the ImageThe first thing that has to be described is the capturing mechanism of the images. The most authoritative means of capturing an image is by a photographic camera and a film. However, this technique is not very useful in the field of digital image processing, since the captured image cannot be easily processed by computer. On the other hand, electronic capture is particularly interesting because the image can be digitized and then processed by a computer. For this reason, conv entional electronic video cameras are widely used. Electronic video cameras scan the image and produce an electrical signal as an output. There are various camera technologies (for example Orthicon, Vidicon, CCD). The electric signal produced by the camera is then led to a frame grabber. During the process of digitalization, the analogue signal is converted to a digital signal using an A / D converter. Thus, the image is converted into a matrix of 256256 or 512512 points (spots). each point is typically represented by 8 bits, i.e. 256 levels of brightness. However, a common technique in some fields (e.g. robotics) is a binary representation of images that uses whole 1 bit / position. This representation is used in order to save memory and speed in the case of simple applications. In some other cases where the colour of an image is critical, colour cameras and 3 A / D converters are used. In this case the three primary RGB colours (red-green-blue) are saved with 38 bits / position. As a result, digital image processing has large memory requirements, even for black and white images. The digitized image is stored as a file on the computers local dish antenna. To be able to see the image, we need to transfer it to a special RAM memory (image memory) connected to a monitor. Such monitors may be black and white or colour (RGB). Colour monitors are mostly used even in black and white applications because they have the ability to show pseudocolours. Finally, the image in any program of image processing appears as a two-dimensional table (array) 256256 or 512512 which is filled by the computers local disk or by the image memory in which the image is stored.The process of capturing an image can cause the following distortionsBlurringNoiseGeometric DistortionsTherefore, before any application the correction of these distortions is essential. Geometric corrections are mostly needed where geometric information is important, e.g. stereoscopes, topography. The reduction o f blurring is done through the process of recovery (restoration). The recovery process is particularly important in applications where there is movement, (e.g. a scene of a road) because the motion introduces blurring. In most cases the filtering of the image is also very important in order to remove noise. This can be done by various linear or nonlinear filters. Usually, nonlinear filters are mostly used because they maintain the contrast of the edges, which is a very important factor for human vision. The overall image contrast can also be improved by special non-linear techniques (contrast enhancement).Edge DetectionAnother important process of image analysis is the recognition (tracing) of contours. There are many techniques that can be used for edge detection. The development of various edge detection techniques was imperative due to the important information about the objects used for identification, which can be found in the contours. The dual problem of edge recognition is t he recognition of regions in an image. This problem is called image segmentation. Usually the different regions of an image are coloured with pseudocolours.Texture AnalysisIn several industrial applications the recognition (or analysis) of the texture is very important. An example of the importance of texture recognition in industrial applications is its use in recognition of different fabrics, or recognition of flaws in a cloth.Recognition of traffic is also a very important field of computer vision for many applications, e.g. traffic monitoring, automatic driving, recognition of moving objects, digital television, videoconferencing, telephone with image compression and broadcast animation. Is should be noticed, that recognition of traffic has large memory requirements for storage and real time processing. This can only be achieved through parallel image processing and use of special VLSI chips.Shape DescriptionAnother area of computer vision which is particularly useful in pattern recognition is the description of shape (shape representation). A shape is described either by its border, or by the area it covers. The edge of a shape can be described in different ways, e.g. Fourier descriptors, splines. The area of a shape can be described by methods of mathematical morphology, decomposition with simple shapes, etc. These methods are used either for the storage of a shape, or for its identification.StereoscopesMany applications require touchstone of depth. In this case stereoscopy with two cameras can be used. Stereoscopy is particularly useful in photogrammetry and robot movement in a three dimensional space.
Subscribe to:
Post Comments (Atom)
No comments:
Post a Comment
Note: Only a member of this blog may post a comment.