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Feature detection

Feature detection. An Important aspect of Image Processing Hasna O. & Mentor- Dr Man. A picture is worth more than a thousand words. Image analysis (a.k.a. understanding), image processing & computer vision plays an important role in society today because

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Feature detection

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  1. Feature detection An Important aspect of Image Processing Hasna O. & Mentor- Dr Man

  2. A picture is worth more than a thousand words Image analysis (a.k.a. understanding), image processing & computer vision plays an important role in society today because • A picture gives a much clearer impression of a situation or an object • Having an accurate visual perspective of things has a high social, technical and economic value

  3. Digital image perception is used for: • Improving pictorial information for human perception • Processing of image data for storage, transmission and representation for autonomous machine perception.

  4. Image Processing Image Processing is to perform numerical operations on higher dimensional signals such as images and video sequences. The objectives of image processing include: • Improving the appearance of the visual data image enhancement, image restoration • Extracting useful information image analysis, reconstruction from projection • Representing the image in an alternate and possibly more efficient form transformation, image compression

  5. Visible Human Project The Visible Human Project was an effort of the National Library of Medicine (NLM) to build a digital image library of volumetric data representing a complete, normal adult male and female. The data sets were released in 1994 and 1995.

  6. Visible Human Project Photo MRI CT

  7. What is Digital Image Processing?

  8. The field of digital image processing refers to processing digital images by means of a digital computer. A digital image composes of a finite number of elements which have a particular location and value and these elements are referred to as picture elements, image elements, pels and pixels. • Digital Image: a two dimensional array of pixels. • Size (or resolution) of an image: • width: N pixels, height: M pixels. • Precision of pixels: • 2n amplitude levels n bits per pixel. • Overall data file size: N  M  n bits

  9. Image Example LENA, 512x512, true color (24 b/p), 786432 bytes.

  10. Images are referred to more than just the projections generated by the visual band of the EM (electromagnetic) waves apparent to humans. Images generated from the entire band of the EM waves ranging from gamma to radio waves can be perceived by imaging machines. Some of these images include ultrasound, electron microscopy, and computer-generated images.

  11. Image Examples Size: 2048x2560

  12. Graphic Example

  13. Video Example AKIYO, 352x288 (CIF), 24 b/p, 30 f/s, 72.99 Mbits/s.

  14. Animation Example

  15. There are 3 computerized processing levels: Low-level process: - is characterized by the fact that both the inputs and outputs are images. These involve primitive operations such as image preprocessing to reduce noise, contrast enhancement and image sharpening. Mid-level process: - is characterized by the fact that its inputs generally are images, but its outputs are attributes extracted from those images such as, edges, contours, and the identity of individual objects. Mid-level processing on images involves tasks such as segmentation (partitioning an image into regions or objects), description of those objects to reduce them to a form suitable for computer processing, and classification (recognition) of individual objects. High-level process: - involves trying deduce an ensemble of recognized objects, from image analysis to performing the cognitive function usually associated with vision.

  16. Origins of Digital Image Processing

  17. In the early 1920’s the Bartlane cable picture transmission system was introduced, thereby reducing the transportation time for a picture from New York to England by days. Digital images were first applied in the newspaper industry when pictures were first set by submarine cable between London and New York, then the Bartlane cable was introduced reducing transmission time from three weeks to three hours. There were different phases in technology improvement; in 1921 the method used for receiving images through a coded tape by a telegraph printer was abandoned in favor of a technique based on photographic reproduction made from tapes perforated at the telegraph receiving terminal with evident improvement in both tonal quality and resolution.

  18. The history of digital image processing is intimately tied to the development of the digital computer. The first computers powerful enough to carry out meaningful image processing tasks appeared in the early 1960s. This was when there was significant development of the high-level programming languages COBOL (common business-oriented language) and FORTRAN (formula translator) and the development of operating systems. The birth of digital image processing can be traced to the availability of advanced computers and the onset of the space program during that period. Work on using computer techniques for improving images from a space probe began at the Jet Propulsion Laboratory in Pasadena, California in 1964 when pictures of the moon transmitted by RANGER 7 were processed by a computer to correct various types of image distortion inherent in the on-board television camera.

  19. Fields that use Digital Image Processing In parallel with space applications, DIP is used in * Medical Imaging * Earth Resources observations * Astronomy

  20. Medical Imaging (extracted from Dr. Man’s Presentation) • Medical imaging is a rich field with multidiscipline nature, involving nuclear physics, quantum mechanics, fluid dynamics, advanced mathematics, biology, chemistry, computer science and computer engineering. • It has become a primary component of modern medicine. • It is still a relatively new field with many unknown effects and unanswered questions. • The technologies are evolving, and new equipment, modality, study methodology have been constantly developed. • Excellent opportunities for research and career development.

  21. Medical Imaging The invention in the early 1970s of computerized axial tomography (CAT) is one of the most important events in the application of image processing in medical diagnosis. Tomography consists of algorithms that use the sensed data to construct an image that represents a slice through the object which compose a three-dimensional (3-D) version of the inside of the object.

  22. X-ray CT

  23. CONTINUED Tomography was invented independently by Sir Godfrey N. Hounsfield and Professor Allan M. Cormack, who shared the 1979 Nobel Prize in Medicine for their invention. X-rays were discovered in 1895 by Wilhelm Conrad Roentgen, for which he received the 1901 Nobel Prize in Physics. These two inventions, nearly 100 years apart led to some of the most active application areas of image processing today. Computer procedures are also used to enhance the contrast or code the intensity levels into color for easier interpretation of X-rays and other images used in industry, medicine, and the biological sciences.

  24. Computed Tomography • Besides the natural images acquired from conventional optical cameras, computer synthesized images become more and more important in many application fields. • Non-invasive imaging modalities allow people to view objects that can not be seen by human eye or camera, • Internal organ of human body, • Damaged part inside an airplane wing, • Cloud covered city, • Dark night battle field, • Underground oil field…

  25. Projection X-Ray

  26. First X-ray The hand of Mrs. Wilhelm Roentgen: the first X-ray image, 1895 (http://www.nlm.nih.gov/exhibition/dreamanatomy/da_g_Z-1.html)

  27. For Mammography Detection and diagnosis of breast cancer based on some of the basis of these signs made visible by Image Processing Architectural distortions of normal tissue patterns Asymmetry between corresponding regions of the images on the right and left breast.

  28. Mammography

  29. Remote Earth Resources and Observations Geographers use the same or similar techniques to study pollution patterns from aerial and satellite imagery. Image enhancement and restoration procedures are used to process degraded images of unrecoverable objects or experimental results too expensive to duplicate. In archaeology, image processing methods have successfully restored blurred pictures that were the only available records of rare artifacts lost or damaged after being photographed.

  30. In physics and other related fields, computer techniques routinely enhance images of experiments in areas such as high-energy plasmas and electron microscopy. Similarly successful applications of image processing concepts can be found in astronomy, biology, nuclear medicine, law enforcement defense, and industrial applications. These examples illustrate processing results intended for human interpretation. The second major area of application of digital image processing techniques deals with machine perception. In this case interest focuses on procedures for extracting from an image, information in a form suitable for computer processing. Examples of the type of information used in machine perception are statistical moments, Fourier transform coefficients, and multidimensional distance measures. Typical problems in machine perception that routinely utilize image processing techniques are automatic character recognition, industrial machine vision for product assembly and inspection, military recognizance, automatic processing of fingerprints, screening of X-rays and blood samples, and machine processing of aerial and satellite imagery for weather prediction and environmental assessment.

  31. Fundamental Steps in DIP Image acquisition- is the first process which involves preprocessing such as scaling. Image enhancement- this is bringing out obscured detail or highlighting certain features of interest in an image. This technique deals with a number of mathematical functions such as the Fourier Transform. Image restoration- it improves the appearance of an image but is objective in the sense that this technique tends to be based on mathematical or probabilistic models of image degradation. Color image processing- this is used as a basis for extracting features of interest in an image.

  32. Wavelets- are the foundation for representing images in various degrees of resolution. Compression- deals with techniques for reducing the storage required to save an image, or the bandwidth required to transmit it. Morphological processing- deals with tools for extracting image components that are useful in the representation and description of shape. Segmentation- partitions an image into its constituent parts or objects. Representation and description- representation is necessary for transforming raw data into a form suitable for subsequent computer processing. Description, also known as feature selection, deals with extracting attributes that result in some quantitative information of interest. Recognition- assigns a label to an object based on its descriptors. Feature Extraction- this is an area of image processing which involves using algorithms to detect and isolate various desired portions of a digitized image or video stream.

  33. Image Enhancement

  34. Histogram Example Original

  35. Histogram Example (cont. ) Poor contrast

  36. Histogram Example (cont. ) Poor contrast

  37. Histogram Example (cont. ) Enhanced contrast

  38. Smoothing and Sharpening Examples Smoothing Sharpening

  39. Smoothing and Sharpening Examples Smoothing Sharpening

  40. Image Analysis

  41. Image analysis is to identify and extract useful information from an image or a video scene, typically with the ultimate goal of forming a decision. • Image analysis is the center piece of many applications such as remote sensing, robotic vision and medical imaging. • Image analysis generally involves basic operations: • Pre-processing, • Object representation, • Feature detection, • Classification and interpretation.

  42. Image Segmentation

  43. Image segmentation is an important pre-processing tool. It produces a binary representation of the object with features of interest such as shapes and edges. Common operations include: Thresholding: to segment an object from its background through a simple pixel amplitude based decision. Complicated thresholding methods may be used when the background is not homogeneous. Edge detection: to identify edges of an object through a set of high-pass filtering. Directional filters and adaptive filters are frequently used to achieve reliable results.

  44. Segmentation Examples Thresholding Edge detection

  45. Feature Extraction This is an area of image processing that uses algorithms to detect and isolate various desired portions of a digitized image.

  46. What is a Feature? A feature is a significant piece of information extracted from an image which provides more detailed understanding of the image.

  47. Examples of Feature Detections • Detecting of faces in an image filled with people and other objects • Detecting of facial features such as eyes, nose, mouth • Detecting of edges, so that a feature can be extracted and compared with another

  48. Feature Detection and Classification

  49. Feature Detection and Classification • Feature detection is to identify the presence of a certain type of feature or object in an image. • Feature detection is usually achieved by studying the statistic variations of certain regions and their backgrounds to locate unusual activities. • Once an interesting feature has been detected, the representation of this feature will be used to compare with all possible features known to the processor. A statistical classifier will produce a feature type that has the closest similarity (or maximum likelihood) to the testing feature. • Data collection and analysis (or the training process)have to be performed at the classifier before any classification.

  50. Feature Extraction Techniques HOUGH TRANSFORM

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