PRE2015 4 Groep2: Difference between revisions

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We are developing a neural network to determine fruit ripeness. The robot will be initially developed for controlling the quality of strawberries. As creating a complete prototype is probably not feasible to do in nine weeks, we start with focusing on the detecting and sensing part. For that we will develop a system which scans fruits and determines their ripeness. It can also consider other factors like for example if the fruit looks appealing.
We are developing a neural network to determine fruit ripeness. The robot will be initially developed for controlling the quality of strawberries. As creating a complete prototype is probably not feasible to do in nine weeks, we start with focusing on the detecting and sensing part. For that we will develop a system which scans fruits and determines their ripeness. It can also consider other factors like for example if the fruit looks appealing.
==Image sets==
We are creating image sets of ripe and unripe strawberries using the format as presented here:
[https://www.cs.toronto.edu/~kriz/cifar.html CIFAR-10/CIFAR-100]
[[File:straw1.png]]
[[File:straw2.png]]
[[File:straw3.png]]
[[File:straw4.png]]
[[File:straw5.png]]
[[File:straw6.png]]
[[File:straw7.png]]
[[File:straw8.png]]
[[File:straw9.png]]
[[File:straw10.png]]
The images are all 64x64, twice the height and width of the CIFAR-10 set, as we will use less images but better quality pictures. These images will be converted into a binary format and segmented into training sets. These images were taken with a Kinect camera attached to a Raspberry Pi. Uniform lighting conditions were used to match that of a quality control facility.
The following setup is being used for taking/uploading images:
[[File:strawsetup.png]]


==Group 2 members==
==Group 2 members==
Line 83: Line 61:


[https://drive.google.com/file/d/0Bz2y3nYcBovfX1FBTmdHSzZ1N1k/view?usp=sharing Enterprise]
[https://drive.google.com/file/d/0Bz2y3nYcBovfX1FBTmdHSzZ1N1k/view?usp=sharing Enterprise]
==Image sets==
We are creating image sets of ripe and unripe strawberries using the format as presented here:
[https://www.cs.toronto.edu/~kriz/cifar.html CIFAR-10/CIFAR-100]
[[File:straw1.png]]
[[File:straw2.png]]
[[File:straw3.png]]
[[File:straw4.png]]
[[File:straw5.png]]
[[File:straw6.png]]
[[File:straw7.png]]
[[File:straw8.png]]
[[File:straw9.png]]
[[File:straw10.png]]
The images are all 64x64, twice the height and width of the CIFAR-10 set, as we will use less images but better quality pictures. These images will be converted into a binary format and segmented into training sets. These images were taken with a Kinect camera attached to a Raspberry Pi. Uniform lighting conditions were used to match that of a quality control facility.
The following setup is being used for taking/uploading images:
[[File:strawsetup.png]]


==Conversation with Cucumber Farmer==  
==Conversation with Cucumber Farmer==  

Revision as of 12:46, 5 June 2016

Neural Networks for Fruit Quality Control

Conveyor.png Qualitycontrol.png

(Wiki markup cheatsheet)

We are developing a neural network to determine fruit ripeness. The robot will be initially developed for controlling the quality of strawberries. As creating a complete prototype is probably not feasible to do in nine weeks, we start with focusing on the detecting and sensing part. For that we will develop a system which scans fruits and determines their ripeness. It can also consider other factors like for example if the fruit looks appealing.

Group 2 members

  • Cameron Weibel (0883114)
  • Maarten Visscher (0888263)
  • Raomi van Rozendaal (0842742)
  • Birgit van der Stigchel (0855323)
  • Mark de Jong (0896731)
  • Yannick Augustijn (0856560)

Project description

To have a robot that can classify fruits based on their ripeness and appeal factors. The fruits are detected while on a transport belt. --or-- In the field.

Add problem description

Requirements

Functional requirements

  • The robot should be able to detect fruit using a Kinect camera.
  • It should be able to classify the ripeness of the fruit based on a convolutional neural network
  • The robot will query an online database about the ripeness of a certain fruit and the database will return the percentile of ripeness the fruit is in based on different fruit image sets
  • The farmer should be able to take pictures of overripe/underripe fruit to add to the training set to give feedback to improve the robot
  • The farmer should be able to interface with the database as well as different harvesting metrics through a mobile device.

Non-functional requirements

  • It should be relatively simple to add the Kinect+Raspberry Pi to an existing harvesting system.
  • The farmer should be able to use the system with minimal prior knowledge
  • The robot should perform better than a human quality controller
  • This robot should have all the safety features necessary to ensure no critical failures.

USE aspects

User

Primary users are farmers and their workers, who directly use the robot. The following aspects hold:

  • Their work becomes far less intensive and heavy. Instead of directly harvesting, farmers can let the robot do the work. They would now only occasionally need to check the harvest and possibly adjust some parameters. This work is less heavy than harvesting and therefore less health problems due to heavy work can be expected.
  • More free time for other things. This is because the new work takes far less time. Also there is no need anymore for training seasonal workers.

Secondary users are distributors that pick up the fruits from the farms. They use the robot occasionally when they need to get the fruits that are picked by the robot. Their work is mostly unaffected, however some parts of their work can be left to the robot, depending on how advanced the robot is. One of these things is selecting fruits based on ripeness and appealing factor. This can be done by the robot. The robot could also directly package and seal the fruits.

A tertiary user is the company that is developing and maintaining this robot. It indirectly uses the robot during development.

(I assume that this is a societal aspect:) Another tertiary user is the harvesting worker. A worker that is harvesting fruit manually does not directly come in contact with the robot. The robot does however influence these workers, as it takes away their jobs. This aspect should be researched more. These harvesting workers are likely people with a low education and students wanting to earn a little more. The people with low education can be expected to have a hard time finding a new job.

Society

Society .

Enterprise

Enterprise

Image sets

We are creating image sets of ripe and unripe strawberries using the format as presented here:

CIFAR-10/CIFAR-100

Straw1.png Straw2.png Straw3.png Straw4.png Straw5.png Straw6.png Straw7.png Straw8.png Straw9.png Straw10.png

The images are all 64x64, twice the height and width of the CIFAR-10 set, as we will use less images but better quality pictures. These images will be converted into a binary format and segmented into training sets. These images were taken with a Kinect camera attached to a Raspberry Pi. Uniform lighting conditions were used to match that of a quality control facility.

The following setup is being used for taking/uploading images:

Strawsetup.png

Conversation with Cucumber Farmer

Trip to PicknPack Conference at Wageningen University

Applebot.jpg Demoline.jpg Fullsys.jpg Imagebrix.jpg Closeup.jpg Rfider.jpg Sealing.jpg

Visit to Kwadendamme Farm

Kwad.jpg

Overview

We learned an immense amount of information from the Steijn farmers in Kwadendamme. These farmers plant Conference pears and Elstar apples, and they process over 900,000kg of fruit every year across 15 hectares of land. As seen in the picture above, the tress are kept to a relatively low height (around 2 meters) and the are aligned nicely in even rows.

Farmer Problems

The main priority of the farmer is to maximize his revenue. In our conversations with Farmer Rene, he mentioned that the biggest detractor from their bottom line was labor. The hourly wage for a Romanian/Polish harvester was 16 euros per hour (which includes tax, healthcare and other employee benefits), even though only 7 euros of that ends up going directly to the worker. The farmers only hire farmhands during 3-4 weeks of the year when they are harvesting their apples and pears, and the rest of the year the majority of their work goes into pruning, fertilizing, and maintaining the plants.

Another way for the farmer to increase his bottom line is to drive top line growth. If the farmer can produce plants that yield 20% more fruit, this translates to an almost equally proportional revenue increase. The farmers mentioned that a robotic system that continually keeps track of the number of produce each row of trees (or individual tree if such accuracy is attainable) is bearing. We discussed the concept of a density map for their land, and the idea resonated with them. We decided here that we would develop the planning for a high-tech farm in which our image processing system would play as a proof of concept for one of the many technologies that would be implemented in the overall farm. This allows us to focus on a more broad perspective, while still creating a technically viable solution.

Usefulness of Our System

The farmers recognized our system as being a necessary innovation within the quality assurance side of the produce supply chain, and they would benefit from a fruit-counting robot utilizing our machine vision software. The proof of concept we will demonstrate at the end of the year is an example implementation of our machine vision system as it applies to quality assurance, but from the farmers' comments it is clear there is plenty of room for innovation in computer vision within the agricultural field.

We also asked the farmers how they felt about certain technologies we saw at Delft, such as the 3D X-ray scanners for detecting internal quality of fruit. Again, they said that such technologies had their place in quality assurance but it was not useful to them as proving an apple that looks good on the outside has internal defects just subtracts from the total number of apples they can sell to the intermediary trader between them an Albert Heijn.


Planning

Week 2
Clarifying our project goals
Working on USE aspects
Finalize planning and technical plan
Sketch a prototype

Week 3
Preliminary design for app
First implementation of app
Database/Server setup
CNN, and basics of neural networks

Week 4
App v1.0 with design fully implemented
Kinect interfacing to Raspberry Pi completed
USEing intensifies
Finish back-end design and choose frameworks

Week 5
App v2.0 with design fully implemented and tested
Further training of CNN
Working database classification (basic)
Casing (with studio lighting LED shining on fruit)

Week 6
Improve CNN
Expand training sets (outside of strawberries (if possible))
User testing on app
Reflect on USE aspects and determine if we still preserve our USE values


Week 7
Implement feedback from testing app
Improve aesthetic appeal detection (if time)

Week 8
Finish everything
Buffer period
Final reflection on USE value preservation


Week 9
Improve wiki for evaluation
Peer review

Fallback: App for user to report feedback in the form of images of high/low quality fruit.
Have Rpi take pictures using Kinect and send to database
Choose a more binary classification (below 50%/above 50% quality)
Flesh out the design more (if implementation fails)

Technical aspects

Database

Application

Application design (User interface)

Research

Harvesting robots

  • Paper from 1993 describing the then state-of-the-art and economic aspects. It has a chapter on economic evaluation.
  • Recent TU/e paper discussing the state-of-the-art on tomato harvesting. It focuses on the mechanical part and does not include sensing and detecting.

Sensing technology

(Older)

  • Yamamoto, S., et al. "Development of a stationary robotic strawberry harvester with picking mechanism that approaches target fruit from below (Part 1)-Development of the end-effector." Journal of the Japanese Society of Agricultural Machinery 71.6 (2009): 71-78. Link
  • Sam Corbett-Davies , Tom Botterill , Richard Green , Valerie Saxton, An expert system for automatically pruning vines, Proceedings of the 27th Conference on Image and Vision Computing New Zealand, November 26-28, 2012, Dunedin, New Zealand Link
  • Hayashi, Shigehiko, Katsunobu Ganno, Yukitsugu Ishii, and Itsuo Tanaka. "Robotic Harvesting System for Eggplants." JARQ Japan Agricultural Research Quarterly: JARQ 36.3 (2002): 163-68. Web. Link
  • Blasco, J., N. Aleixos, and E. Moltó. "Machine Vision System for Automatic Quality Grading of Fruit." Biosystems Engineering 85.4 (2003): 415-23. Web. Link
  • Cubero, Sergio, Nuria Aleixos, Enrique Moltó, Juan Gómez-Sanchis, and Jose Blasco. "Advances in Machine Vision Applications for Automatic Inspection and Quality Evaluation of Fruits and Vegetables." Food Bioprocess Technol Food and Bioprocess Technology 4.4 (2010): 487-504. Web. Link
  • Tanigaki, Kanae, et al. "Cherry-harvesting robot." Computers and Electronics in Agriculture 63.1 (2008): 65-72. Direct Dianus
    • Evaluation of a cherry-harvesting robot. It picks by grabbing the peduncle and lifting it upwards.
  • Hayashi, Shigehiko, et al. "Evaluation of a strawberry-harvesting robot in a field test." Biosystems Engineering 105.2 (2010): 160-171. Direct Dianus
    • Evaluation of a strawberry-harvesting robot.

State of the art

A small number of tests have been done with machines for harvesting strawberries. These are large, bulky and expensive machines like Agrobot. Cost prices are in the order of 50,000 dollar. Todo: add citations.

A lot of research is done towards inspection by means of machine vision. Todo: add citations and continue.

Further reading

  • Aeroponics (we most likely won’t use this as an irrigation method)

Manual strawberry harvesting process

Source (move to citation)

Meetings

Moved to Talk:PRE2015_4_Groep2.