A basis is orthonormal if its vectors:
have unit norm;
are orthogonal to each other (i.e., their inner product is equal to zero).
The representation of a vector as a linear combination of an orthonormal basis is called Fourier expansion. It is particularly important in applications.
Let us start by defining orthonormality for a set of vectors (not necessarily a basis).
Definition
Let
be a vector space equipped with
an inner product
.
A set of
vectors
is said to be an orthonormal set if and only
if
Thus, all vectors in an orthonormal set are orthogonal to each other and have
unit
norm:
Let us make a simple example.
Example
Consider the space
of all
column vectors having real
entries, together with the inner
product
where
and
denotes the transpose of
.
Consider the set of two vectors
The
inner product of
with itself
is
The
inner product of
with itself
is
The
inner product of
and
is
Therefore,
and
form an orthonormal set.
The next proposition shows a key property of orthonormal sets.
Proposition
Let
be a vector space equipped with an inner product
.
The vectors of an orthonormal set
are linearly independent.
The proof is by contradiction. Suppose that
the vectors
are linearly dependent. Then, there exist
scalars
,
not all equal to zero, such that
Thus,
for any
,
where:
in step
we have used the additivity and homogeneity of the inner product in its first
argument; in step
we have used the fact that we are dealing with an orthonormal set, so that
if
;
in step
we have used the fact that the vectors
have unit norm. Therefore, all the coefficients
must be equal to zero. We have arrived at a contradiction and, as a
consequence, the hypothesis that
are linearly dependent is false. Hence, they are linearly independent.
If an orthonormal set is a basis for its space, then it is called an orthonormal basis.
Definition
Let
be a vector space equipped with an inner product
.
A set of
vectors
are called an orthonormal basis of
if and only if they are a
basis for
and they form an orthonormal set.
In the next example we show that the canonical basis of a coordinate space is an orthonormal basis.
Example
As in the previous example, consider the space
of all
column vectors having real entries, together with the inner
product
for
.
Let us consider the three
vectors
which
constitute the canonical basis
of
.
We can clearly see
that
For
instance,
and
Thus,
the canonical basis is an orthonormal basis.
It is incredibly easy to derive the representation of a given vector as a linear combination of an orthonormal basis.
Proposition
Let
be a vector space equipped with an inner product
.
Let
be an orthonormal basis of
.
Then, for any
,
we
have
Suppose the unique representation of
in terms of the basis
is
where
are scalars. Then, for
,
we have
that
where:
in step
we have used the additivity and homogeneity of the inner product in its first
argument; in step
we have used the fact that we are dealing with an orthonormal basis, so that
if
;
in step
we have used the fact that the vectors
have unit norm. Thus, we have found that
for any
,
which proves the proposition.
The linear combination
above is called Fourier expansion and the coefficients
are called Fourier coefficients.
In other words, we can find the coefficient of
by simply calculating the inner product of
with
.
Example
Let
be the space of all
column vectors with
complex entries, together with the inner
product
where
and
is the conjugate transpose
of
.
Consider the orthonormal
basis
Consider
the
vector
Then,
the first Fourier coefficient of
is
and
the second Fourier coefficient
is
We
can check that
can indeed be written as a linear combination of the basis with the
coefficients just
derived:
Below you can find some exercises with explained solutions.
Use the orthonormal basis of two complex vectors introduced in the previous
example to derive the Fourier coefficients of the
vector
The first Fourier coefficient is derived
by computing the inner product of
and
:
The
second Fourier coefficient is found by calculating the inner product of
and
:
Verify that the Fourier coefficients found in the previous exercise are correct.
In particular, check that using them to linearly combine the two vectors of
the basis gives
as a result.
The Fourier representation of
is
which
is the desired result.
Please cite as:
Taboga, Marco (2021). "Orthonormal basis", Lectures on matrix algebra. https://www.statlect.com/matrix-algebra/orthonormal-basis.
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