Erratum to "Error Propagation Framework for Diffusion Tensor Imaging via Diffusion Tensor Representations"
نویسندگان
چکیده
In [1], the first and fourth sentences on the second column of page 1017, there were two instances where “Poonawalla [19]” should be “Poonawalla et al. [19].” In the last sentence of the first paragraph of Section II-C titled “Error Propagation Framework for Vector Functions,” which is on the second column of page 1021, the phrase “at the bottom of the page” should be replaced by “at the bottom of page 1022.” In the sentence just above the last paragraph of the first column of page 1027, the phrase “at the bottom of the page” should be replaced by "at the bottom of page 1029.”
منابع مشابه
Propagation Framework for Diffusion Tensor Imaging via Diffusion Tensor Error Propagation Framework for Diffusion Tensor Imaging via Diffusion Tensor Representations
This preprint is made available because the published work cited below had several infelicities due to production error, i.e., awkward layout of equations and font styles. The conversion from the Words document here to IEEE TMI format was a mess. Abstract An analytical framework of error propagation for diffusion tensor imaging (DTI) is presented. Using this framework, any uncertainty of intere...
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عنوان ژورنال:
- IEEE Trans. Med. Imaging
دوره 26 شماره
صفحات -
تاریخ انتشار 2007