Connexions

You are here: Home » Content » Conclusion and Future Improvement of the Fish Classification Project
Content Actions
Lenses

What is a lens?

Lenses

A lens is a custom view of Connexions content. You can think of it as a fancy kind of list that will let you see Connexions through the eyes of organizations and people you trust.

What is in a lens?

Lens makers point to Connexions materials (modules and collections), creating a guide that includes their own comments and descriptive tags about the content.

Who can create a lens?

Any individual Connexions member, a community, or a respected organization.

This content is ...
Affiliated with (?)
This content is either by members of the organizations listed or about topics related to the organizations listed. Click each link to see a list of all content affiliated with the organization.
  • This module is included inLens: Rice University ELEC 301 Project Lens
    By: Rice University ELEC 301As a part of collection:"ECE 301 Projects Fall 2003"

    Click the "Rice University ELEC 301 Projects" link to see all content affiliated with them.

    Rice University ELEC 301 Projects
  • This module is included inLens: Rice University OpenCourseWare
    By: OpenCourseWare ConsortiumAs a part of collection:"ECE 301 Projects Fall 2003"

    Click the "Rice University OCW" link to see all content affiliated with them.

    Rice University OCW
Tags

(?)

These tags come from the endorsement, affiliation, and other lenses that include this content.

Conclusion and Future Improvement of the Fish Classification Project

Module by: Kyle Clarkson, Jason Sedano, Ian Clark

Summary: This explains the conclusions found with our fish classification project and suggests ways in which the project could be improved and extended.

We ran the images first with the ideal background at 4 levels of noise and then again with the background subtracted off and almost ideal. The ideal cases have better values than the background values and random noise on the images effects the accuracy dramatically. It is interesting that as noise is added the length/width ratio test fails early and since trout is based heavily on this test we receive more error there. Even with little error, poor picture quality effects the performance.
The project was overall a success because it was able to detect most of the fish pictures correctly. Several of the tests even stood up well as noise was added to the system, although several did not work very will with large amounts of noise. This is a feasable system to install someplace, though, if it had a bit of work to focus it on exact fish that would be found in that area and thus could have the tolerance values adjusted a bit.
Another large source of error for this project was the pictures that were used to test. Pictures were just taken from the internet and many were not as close to actual test cases as we would have liked. The picture quality was so low on some pictures that they couldn't even be detected with no noise. If the system was installed someplace, much more standardized pictures could be taken and thus, results would be expected to improve.
The project could also be improved by altering some of the threshold values used. With massive amounts of testing, and more test cases, ideal threshold values for several of the tests could be experimented with and found to improve the exact accuracy of the tests, even though the process is still good. Also, the weights of the different tests could be changed so that the tests that hold up better with large amounts of noise were more important in the decision process than the tests that only work will with low noise.

Future Improvements

The future improvments are as follows:
  • Noise Filtering Images – Noise Errors at Many Levels
  • Different Species – Other Fish types Yield Other Possibilities
  • Moving Images - How Fish Swim and The Motion Vectors
  • Matched Filter Techniques – Possible Tracking of Exact Fish

Team

  • Ian Clark (ianclark@rice.edu) - Responsible for Fin Detection Test, Intensity Test, and Poster Design
  • Kyle Clarkson (kclarks@rice.edu) - Responsible for Length/Width Test, Feature Detection Test, Website, and other Matlab Code
  • Jason Second (jjsedano@rice.edu) - Responsible for Photo Collection and Preparation, Website, and Poster Design

Comments, questions, feedback, criticisms?

Send feedback