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Complete scene example for obstacle avoidance and machine learning #42
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Issue-Label Bot is automatically applying the label Links: app homepage, dashboard and code for this bot. |
Hi, You can easily create your own environments, a simple way to spawn objects in the simulation is to use the |
Hi @wbadry, I would like to add that what you want to do is completely possible with this library. We have for example created a scenario where Pepper has to detect and identify objects, and then perform an action based on the object. This is all done with |
@wagenaartje hopefully to get it this soon as I badly need such a thing this month. Thank you so much. |
@wbadry, @wagenaartje any updates on that issue ? |
I got no feedback since the last one. That would make it amazing if there is such an example. |
I'll modify the issue, explicitly requesting an example implementing a complex scene. Since we don't want the size of the repo to be too big, we won't store additional meshes, the example will use meshes from the |
Sorry for not getting back to you faster, I have uploaded the example here. There are four files, and I will quickly explain what each of them does:
It is quite basic and I haven't looked at it for a while. It is really important that you have 95% validation accuracy - there is a decently working model in the folder |
Hello,
I was wondering if it is possible to share some complete scenes like indoor places or any scene for obstacle avoidance and potential machine learning. Is there any way to add objects, textures and so on to the scene? Thanks
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