A simple prior free factorization algorithm \cite{dai2014simple} is quite
often cited work in the field of Non-Rigid Structure from Motion (NRSfM). The
benefit of this work lies in its simplicity of implementation, strong
theoretical justification to the motion and structure estimation, and its
invincible originality. Despite this, the prevailing view is, that it performs
exceedingly inferior to other methods on several benchmark datasets
\cite{jensen2018benchmark,akhter2009nonrigid}. However, our subtle
investigation provides some empirical statistics which made us think against
such views. The statistical results we obtained supersedes Dai {\it{et
al.}}\cite{dai2014simple} originally reported results on the benchmark datasets
by a significant margin under some elementary changes in their core algorithmic
idea \cite{dai2014simple}. Now, these results not only exposes some unrevealed
areas for research in NRSfM but also give rise to new mathematical challenges
for NRSfM researchers. We argue that by \textbf{properly} utilizing the
well-established assumptions about a non-rigidly deforming shape i.e, it
deforms smoothly over frames \cite{rabaud2008re} and it spans a low-rank space,
the simple prior-free idea can provide results which is comparable to the best
available algorithms. In this paper, we explore some of the hidden intricacies
missed by Dai {\it{et. al.}} work \cite{dai2014simple} and how some elementary
measures and modifications can enhance its performance, as high as approx. 18\%
on the benchmark dataset. The improved performance is justified and empirically
verified by extensive experiments on several datasets. We believe our work has
both practical and theoretical importance for the development of better NRSfM
algorithms.Comment: Accepted for publication in IEEE, WACV 202