Chapter 6 Da-Wen Sun ©2010 Elsevier, Inc..

Slides:



Advertisements
Similar presentations
TWO STEP EQUATIONS 1. SOLVE FOR X 2. DO THE ADDITION STEP FIRST
Advertisements

Laws of Reflection From the Activity you performed, when you shine an incident light ray at a plane mirror, the light is reflected off the mirror and forms.
Chapter 13 INCOME INEQUALITY.
Orthogonal Projection
Chapter 1 The Study of Body Function Image PowerPoint
1 Copyright © 2011, Elsevier Inc. All rights Reserved. Size Analysis and Identification of Particles Chapter 4 Roger W. Welker.
Copyright © 2011, Elsevier Inc. All rights reserved. Chapter 5 Author: Julia Richards and R. Scott Hawley.
Copyright © 2011, Elsevier Inc. All rights reserved. Chapter 4 Author: Julia Richards and R. Scott Hawley.
Movement of Light, Heat, and Chemicals in Water
Chapter 19 Chapter 19 The Mechanical Behavior of Bone Copyright © 2013 Elsevier Inc. All rights reserved.
1 Copyright © 2010, Elsevier Inc. All rights Reserved Fig 2.1 Chapter 2.
1 Copyright © 2013 Elsevier Inc. All rights reserved. Chapter 38.
1 Chapter 40 - Physiology and Pathophysiology of Diuretic Action Copyright © 2013 Elsevier Inc. All rights reserved.
Chapter 1 Image Slides Copyright © The McGraw-Hill Companies, Inc. Permission required for reproduction or display.
Unit C: Forest Management
Jeopardy Q 1 Q 6 Q 11 Q 16 Q 21 Q 2 Q 7 Q 12 Q 17 Q 22 Q 3 Q 8 Q 13
Jeopardy Q 1 Q 6 Q 11 Q 16 Q 21 Q 2 Q 7 Q 12 Q 17 Q 22 Q 3 Q 8 Q 13
0 - 0.
DIVIDING INTEGERS 1. IF THE SIGNS ARE THE SAME THE ANSWER IS POSITIVE 2. IF THE SIGNS ARE DIFFERENT THE ANSWER IS NEGATIVE.
Addition Facts
Environmental Remote Sensing GEOG 2021 Lecture 2 Image display and enhancement.
3.1 Si23_03 SI23 Introduction to Computer Graphics Lecture 3 – Colour Vision.
1GR2-00 GR2 Advanced Computer Graphics AGR Lecture 6 Physically Based Reflection Model.
5.1 si31_2001 SI31 Advanced Computer Graphics AGR Lecture 5 A Simple Reflection Model.
Calypso Construction Features
Machine Learning Math Essentials Part 2
Digital Imaging with Charge- coupled devices (CCDs)
Copyright, © Qiming Zhou GEOG3610 Remote Sensing and Image Interpretation Human Vision and Colour.
Copyright 2012, 2008, 2004, 2000 Pearson Education, Inc.
© S Haughton more than 3?
Distributed Forces: Centroids and Centers of Gravity
Columbus State Community College
Squares and Square Root WALK. Solve each problem REVIEW:
#1UNIT C Describes a material which allows light to pass through easily.
BEEF Source: Original slide set published by the former National Live Stock Meat Board; 36 South Wabash Avenue; Chicago, Illinois Converted to PPT.
Chapter 5 Test Review Sections 5-1 through 5-4.
Addition 1’s to 20.
STATIKA STRUKTUR Genap 2012 / 2013 I Made Gatot Karohika ST. MT.
25 seconds left…...
True or False? 20 questions. Question 1 Sound is a transverse wave.
Lots of fun! Win valuable prizes!
Meat Cut Identification. Beef Top Round Steak Beef Top Round Steak The Top Round Steak is the most tender of the various round steaks. This boneless.
Absorbance spectroscopy
Week 1.
Fisica Generale - Alan Giambattista, Betty McCarty Richardson Copyright © 2008 – The McGraw-Hill Companies s.r.l. 1 Chapter 23: Reflection and Refraction.
We will resume in: 25 Minutes.
13- 1 Chapter 13: Color Processing 。 Color: An important descriptor of the world 。 The world is itself colorless 。 Color is caused by the vision system.
How Cells Obtain Energy from Food
30 ID Cuts.
Meat Identification Quiz
Engineering Graphics I
Optics and Human Vision The physics of light
Chlorophyll Estimation Using Multi-spectral Reflectance and Height Sensing C. L. JonesResearch Engineer N. O. Maness Professor M. L. Stone Regents’ Professor.
Image classification in natural scenes: Are a few selective spectral channels sufficient?
Beef. Round Round Steak This steak is identified by the round leg bone and three muscles. At the top of the screen is the top round, at the lower left.
Digital Numbers The Remote Sensing world calls cell values are also called a digital number or DN. In most of the imagery we work with the DN represents.
Spectral Characteristics
Food Quality Evaluation Techniques Beyond the Visible Spectrum Murat Balaban Professor, and Chair of Food Process Engineering Chemical and Materials Engineering.
Eusoballoon optics test Baptiste Mot, Gilles Roudil, Camille Catalano, Peter von Ballmoos Test configuration Calibration of the light beam Exploration.
Class of Beef Ribs Class of Beef Ribs - Results.
VERTICAL SCANNING INTERFEROMETRY VSI
Optical Non-Invasive Approaches to Diagnosis of Skin Diseases
Digital Numbers The Remote Sensing world calls cell values are also called a digital number or DN. In most of the imagery we work with the DN represents.
Optical Non-Invasive Approaches to Diagnosis of Skin Diseases
Efficient Receptive Field Tiling in Primate V1
Joseph M. Johnson, William J. Betz  Biophysical Journal 
The Structure and Timescales of Heat Perception in Larval Zebrafish
A Map for Horizontal Disparity in Monkey V2
Volume 111, Issue 2, Pages (July 2016)
Efficient Receptive Field Tiling in Primate V1
Presentation transcript:

Chapter 6 Da-Wen Sun ©2010 Elsevier, Inc.

Figure 6. 1: Traditional methods for measuring meat quality parameters Figure 6.1: Traditional methods for measuring meat quality parameters. (a) Measuring water holding capacity (WHC) by using EZ-Drip loss method (Rasmussen & Andersson, 1996); (b) measuring WHC by using bag method (Honikel, 1998); (c) measuring pH by using pH meter; and (d) measuring color by using a portable Minolta colorimeter. ©2010 Elsevier, Inc.

Figure 6. 2: Destructive determination methods of meat tenderness Figure 6.2: Destructive determination methods of meat tenderness. (a–f) using slice shear force “SSF”, (g–i) using Warner–Bratzler shear force “WBSF”. [Slice shear force “SSF” method: a single slice of 5{ts}cm long from the centre of a cooked steak is removed parallel to the long dimension (a); using a double-blade knife, two parallel cuts are simultaneously made through the length of the 5{ts}cm long steak portion at a 45° angle to the long axis and parallel to the muscle fibres (b–c), this results in a slice of 5{ts}cm long and 1{ts}cm thick parallel to the muscle fibres (d), and the slice is then sheared once perpendicular to the muscle fibers using universal testing machine equipped with a flat, blunt-end blade (e–f); Warner-Bratzler shear force “WBSF” method: six core samples of 12.7{ts}mm in diameter are taken from a cooked steak parallel to the longitudinal orientation of the muscle fibres (g), each core is then sheared using universal testing machine equipped with a triangular slotted blade (h–i). In both methods the maximum shear force (meat tenderness) is the highest peak of the force–deformation curve.] ©2010 Elsevier, Inc.

Figure 6.3: Visible and NIR hyperspectral imaging system for beef tenderness prediction (Naganathan et al., 2008a and Grimes, et al., 2008 ). (1) CCD camera; (2) spectrograph; (3) lens; (4) diffuse lighting chamber; (5) tungsten halogen lamps; (6) linear slide; (7) sample plate. ©2010 Elsevier, Inc.

Figure 6.4: Distribution of samples in the canonical space (Naganathan et al., 2008a). ©2010 Elsevier, Inc.

Figure 6. 5: Hyperspectral image of optical scattering in beef steak Figure 6.5: Hyperspectral image of optical scattering in beef steak. Y-axis represents spectral information with intervals of 4.54{ts}nm and X-axis represents spatial distance with a spatial resolution of 0.2{ts}mm. The optical scattering can be seen to vary with wavelength (Cluff , et al., 2008). ©2010 Elsevier, Inc.

Figure 6.6: Difference in the averaged optical scattering profiles of the porterhouse strip steak (WBS = 28.9 N) and tenderloin (WBS = 24.7 N) (Cluff et al., 2008).   ©2010 Elsevier, Inc.

Figure 6.7: Spectral characteristics of different quality levels of pork samples with water absorbing bands at 750 and 950{ts}nm indicated (Qaio et al., 2007a ). ©2010 Elsevier, Inc.

Figure 6.8: Layout of the main configuration of the NIR spectral imaging system (ElMasry and Wold, 2008.) ©2010 Elsevier, Inc.

Figure 6.9: Key steps for building chemical images (distribution maps) (ElMasry & Wold, 2008 ). ©2010 Elsevier, Inc.

Figure 6.10: Water and fat distribution maps in fillets, the values in the left bottom corner of the figure represent the average concentrations of water and fat in the whole fillet: (a) Atlantic halibut; (b) catfish; (c) cod; (d) herring; (e) mackerel; and (f) saithe (ElMasry and Wold, 2008).   ©2010 Elsevier, Inc.

Figure 6.11: Hyperspectral imaging system in the shortwave infrared (SWIR) region for qualitative freshness evaluation of whole fish and fillets (Chau et al., 2009). ©2010 Elsevier, Inc.

Figure 6.12: Identifying fillet flesh region of interest (red) after excluding the oversaturated specular area (green) and belly area (blue) based on their spectral data. ©2010 Elsevier, Inc.

Figure 6.13: False color images of the whole cod fish at 1164{ts}nm. ©2010 Elsevier, Inc.

(a) (b) Figure 6.14: Fish fillet images: (a) color image where the red, green, and blue channel is represented by spectral image at 640, 550 and 460{ts}nm, respectively; the green dashed line indicates the manually detected centreline and the blue dotted lines indicate the transition between tail to centre cut and centre cut to loin/belly-flap respectively; (b) centreline enhanced image, the axis on the left-hand side indicates the position along the fillet in percent relative to fillet length (Sivertsen et al., 2009). ©2010 Elsevier, Inc.

Figure 6. 17: Section of cod fillet Figure 6.17: Section of cod fillet. (a) Image of the cod sample captured with RGB digital camera. (b) Spectral image at 540{ts}nm where the nematodes, K1 to K5, are indicated with white circles, a blood spot, B, marked with a dotted circle and black lining, BL, marked with a dotted circle. (c) Classification result, in green, on top of the 540{ts}nm image before thresholding. For naked eye the bloodspot may appear as a parasite. Bloodspots were not identified as parasites by the classification (Heia et al., 2007). ©2010 Elsevier, Inc.

Figure 6.19: Color composite image of a 90{ts}mg cecal mass contaminant: (a) pixels not detected (black); (b) pixels detected (gray or yellow) with a 1.10 threshold; (c) pixels detected with a 1.05 threshold; (d) pixels detected with a 1.10 threshold (Windham et al., 2005b).   ©2010 Elsevier, Inc.

Figure 6.20: Hyperspectral image processing of a poultry carcass: (a) color composite image (pseudo-RGB image); (b) calibrated color image; (c) ratio image (I565/I517); (d) background mask (Park et al ., 2006a). ©2010 Elsevier, Inc.

Figure 6.21: Band ratio of two wavelengths (517 and 565{ts}nm) selected by regression model and scanning monochromator: (a) threshold = 1.0; (b) threshold = 1.0 with filter; (c) threshold = 0.95; (d) threshold = 0.95 with filter (Park et al., 2006a ). ©2010 Elsevier, Inc.

Figure 6.24: Flowchart of poultry processing line in a real-time fecal inspection imaging system at pilot-scale plant in Russell Research Center (Park et al., 2006b). ©2010 Elsevier, Inc.