November 2, 19981 MIDTERM GRADE DISTRIBUTION 100 2 90-99 7 80-89 10 70-79 4 60-69 4 50-59 6 40-49 1.

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Presentation transcript:

November 2, MIDTERM GRADE DISTRIBUTION

November 2, DILATION AND EROSION EULER # = # CONNECTED COMPONENTS - # HOLES CONNECTED COMPONENTS HOLES EROSION INCREASES/ DECREASES DECREASES DILATION DECREASES DECREASES/ INCREASES

November 2, FINAL EXAM Tues. Dec. 8 (Tentative) FINAL PROJECT Due Wed. Dec. 2

November 2, FINAL PROJECT (Pick one) Finding Medial Axis skeletons Object Recognition Texture Segmentation Simulate Shape From Reflectance Relaxation Labeling

November 2, CLASS LECTURE TOPICS Mon. Nov. 2: Texture Tues. Nov. 3: Photometric Stereo Wed. Nov. 4: Shape From Shading Mon. Nov. 9: Motion and Optic Flow Tues./Wed. Nov. 10, 11: Color Science

November 2, TEXTURE REGULAR STATISTICAL ISOTROPIC STATISTICAL ANISOTROPIC

November 2, Color Edges Color Edges in 2 or more bands may always have non-zero first order variation in all image directions at an edge point. Edge strengths arise from the 2 eigenvalues of a 2x2 symmetric matrix. The corresponding eigenvectors are the respective edge directions. Color Canny Edges arise from the first order variation of the largest eigenvalue along the direction of the respective eigenvector

November 2, TOPIC REVIEW WEEK 1-2 –Geometric Models –Illumination models –Basic Reflectance models –Basic Image Processing Transformations Discrete Convolution Gamma Correction

November 2, TOPIC REVIEW WEEK 3 –Image File formats –Image compression –Edge Detection First Order Edge Detection Second Order Edge Detection Mexican Hat Filter Canny Edge Detection

November 2, TOPIC REVIEW WEEK 4-5 –Iterative algorithms on images –Template Matching –Hough transform –Generalized Hough Transform –Grey Level Histrograms –Mathematical Morphology

November 2, TOPIC REVIEW WEEK 6-7 – Image Formation Perspective Projection Orthographic Projection –Thin Lens Optics –Very Basic Radiometry –Stereo Imaging 2-D View 3-D View … Epipolar Geometry