[NXC UserInteraction Library]

LocationType drawCenteredBorderedTextWithMinWidth (string text_, int yPosition_, int minWidth_)

Draw centered text with border of at least minWidth_ around it. Draw presicely-fitting border if minWidth_ <= 0.

Parameters:
text_ Text to draw
yPosition_ Starting Y position of text
minWidth_ Minimal width of the text. Specify <= 0 to fit the border precisely around text.

Returns:
LocationType where X = button X position, Y = button height

Related:
LocationType drawCenteredBorderedText (string text_, int yPosition_)
LocationType drawBorderAroundText (LocationType textInfo_, int yPosition_)


{Please enable JavaScript in order to post comments}

NXTPong

A custom-built lego machine for playing pong, featuring two controllers connected to the Mindstorms NXT brick. Programmed using NXC.

Developing in NXC using XCode

After comparing a number of options, I chose NXC as a pretty good alternative to Robot-C. It supports a lot of things like sensor and motor management, playing of sounds, basic 2D and 3D graphics, etc. Most importantly, you can compile your programs from the command line or from XCode. This tutorial assumes knowledge of XCode 4 and of C. The NXC programming guide is a good reference.

Setting up NXC Development on a Mac

This tutorial provides a step-by-step guide for setting up your Mac or Linux machine and your NXT brick for development with NXC. We will use the enhanced NXC firmware in order to enable extended functions for development.

pyCreeper

The main purpose of pyCreeper is to wrap tens of lines of python code, required to produce graphs that look good for a publication, into functions. It takes away your need to understand various quirks of matplotlib and gives you back ready-to-use and well-documented code.

Novelty detection with robots using the Grow-When-Required Neural Network

The Grow-When-Required Neural Network implementation in simulated robot experiments using the ARGoS robot simulator.

Fast Data Analysis Using C++ and Python

C++ code that processes data and makes it available to Python, significantly improving the execution speed.