I am trying to convert point clouds sampled and stored in XYZij data (which, according to the document, stores data in camera space) into a world coordinate system so that they can be merged. The frame pair I use for the Tango listener has `COORDINATE_FRAME_START_OF_SERVICE`

as the base frame and `COORDINATE_FRAME_DEVICE`

as the target frame.

This is the way I implement the transformation:

Retrieve the rotation quaternion from

`TangoPoseData.getRotationAsFloats()`

as`q_r`

, and the point position from`XYZij`

as`p`

.Apply the following rotation, where

`q_mult`

is a helper method computing the Hamilton product of two quaternions (I have verified this method against another math library):`p_transformed = q_mult(q_mult(q_r, p), q_r_conjugated);`

Add the translate retrieved from

`TangoPoseData.getTranslationAsFloats()`

to`p_transformed`

.

But eventually, points at `p_transformed`

always seem to end up in clutter of partly overlapped point clouds instead of an aligned, merged point cloud.

Am I missing anything here? Is there a conceptual mistake in the transformation?

Thanks in advance.