Six-dimensional movable antenna (6DMA) is an innovative and transformative
technology to improve wireless network capacity by adjusting the 3D positions
and 3D rotations of antennas/surfaces (sub-arrays) based on the channel spatial
distribution. For optimization of the antenna positions and rotations, the
acquisition of statistical channel state information (CSI) is essential for
6DMA systems. In this paper, we unveil for the first time a new
\textbf{\textit{directional sparsity}} property of the 6DMA channels between
the base station (BS) and the distributed users, where each user has
significant channel gains only with a (small) subset of 6DMA position-rotation
pairs, which can receive direct/reflected signals from the user. By exploiting
this property, a covariance-based algorithm is proposed for estimating the
statistical CSI in terms of the average channel power at a small number of 6DMA
positions and rotations. Based on such limited channel power estimation, the
average channel powers for all possible 6DMA positions and rotations in the BS
movement region are reconstructed by further estimating the multi-path average
power and direction-of-arrival (DOA) vectors of all users. Simulation results
show that the proposed directional sparsity-based algorithm can achieve higher
channel power estimation accuracy than existing benchmark schemes, while
requiring a lower pilot overhead.