Image Processing and Analysis Image Analysis. Pixel Values: Line Profile.

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Presentation transcript:

Image Processing and Analysis Image Analysis

Pixel Values: Line Profile

Line Profile

Exercise 5.1

Quantify Areas

Quantify Diagram

IVB Functions

Centroid Function

Linear Averages

Exercise 5.2

Simple Edge Detector

Exercise 5.3

Overlay and ROI

Edge Detecton Tool

Exercise 5.4

Peaks and Valleys

Exercise 5.5

Locating Edges

DC Motor Image

Circular Edges

Exercise 5.7

DC Motor Image (2)

Morphology: Distance

Exercise 5.8

Distance / Danielsson

Labeling

Exercise 5.9

Segmentation

Exercise 5.10

Segmentation (Motor)

Circle Detection

Exercise 5.11

Quantitative: Counting

Exercise 5.12

Distances (Clamping)

Clamping Vertical Min.

Clamping Horiz. Min.

Clamping Horiz. Max.

Basic Particle Analysis

Exercise 5.14

Complex Particle Analysis

Exercise 5.15

Choose Measurements

Particle Parameter

Image Calibration

Pixel Calibration

Exercise 5.17

Grid Calibration

Instrument Reading (analog)

Analog Instrument

Instrument Reading (digital)

Digital Instrument

Bar Code Reading