$\newcommand{\R}{\mathbb R}\newcommand{\Z}{\mathbb Z}\newcommand{\ep}{\varepsilon}\newcommand{\de}{\delta}$Let $\psi_j:=0$ for $j=-1,-2,\dots$. Then
\begin{equation*}
X_t=\sum_{j\in\Z}X_{t,j}
\end{equation*}
for $t\in\Z$, where
\begin{equation*}
X_{t,j}:=\psi_{t-j}\ep_j.
\end{equation*}
Let
\begin{equation*}
B:=\sqrt{\sum_{j\in\Z} \psi_i^2},\quad m:=\max_{j\ge0}|\psi_j|=\max_{j\in\Z}|\psi_j|.
\end{equation*}
Suppose that $B>0$ and $m$ vary in any manner such that
\begin{equation*}
m/B\to0. \tag{1}\label{1}
\end{equation*}
Let us show that then $X_t/B$ converges in distribution to a standard normal random variable, for each $t\in\Z$.
For each real $\de>0$,
\begin{equation*}
\begin{aligned}
L&:=\frac1{B^2}\sum_{j\in\Z}EX_{t,j}^2\,1(|X_{t,j}|\ge\de B) \\
&=\frac1{B^2}\sum_{j\in\Z}E(\psi_{t-j}\ep_j)^2\,1(|\psi_{t-j}\ep_j|\ge\de B) \\
&\le\frac1{B^2}\sum_{j\in\Z}\psi_{t-j}^2E\ep_j^2\,1(|\ep_j|\ge\de B/m) \\
&=\frac1{B^2}\sum_{j\in\Z}\psi_{t-j}^2E\ep_0^2\,1(|\ep_0|\ge\de B/m) \\
&=E\ep_0^2\,1(|\ep_0|\ge\de B/m)\to0.
\end{aligned}
\end{equation*}
Hence,
\begin{equation*}
\frac1{B^2}\sum_{j\in\Z}EX_{t,j}^2\,1(|X_{t,j}|<\de B)=1-L\to1,
\end{equation*}
\begin{equation*}
\begin{aligned}
&\frac1{B^2}\sum_{j\in\Z}(EX_{t,j}\,1(|X_{t,j}|<\de B))^2 \\
&=\frac1{B^2}\sum_{j\in\Z}(EX_{t,j}\,1(|X_{t,j}|\ge\de B))^2
\le L\to0,
\end{aligned}
\end{equation*}
\begin{equation*}
\begin{aligned}
&\Big|\frac1B\sum_{j\in\Z}EX_{t,j}\,1(|X_{t,j}|<\de B)\Big| \\
&=\Big|\frac1B\sum_{j\in\Z}EX_{t,j}\,1(|X_{t,j}|\ge\de B)\Big| \\
&\le\frac1B\sum_{j\in\Z}E|X_{t,j}|\,1(|X_{t,j}|\ge\de B)\
\le \frac L\de\to0,
\end{aligned}
\end{equation*}
\begin{equation*}
\sum_{j\in\Z}P(|X_{t,j}|\ge\de B)\le L\to0.
\end{equation*}
So, by Theorem 18 in Chapter IV, $X_t/B$ converges in distribution to a standard normal random variable, for each $t\in\Z$.
Thus, under condition \eqref{1}, all the one-dimensional distributions of the process $(X_t)$ are asymptotically normal.
Similarly considered are all the finite-dimensional distributions of the process $(X_t)$ -- that is, all the joint distributions of $(X_{t_1},\dots,X_{t_p})$ for integers $t_1<\cdots<t_p$. This is done by writing
\begin{equation*}
\sum_{i=1}^p c_i X_{t_i}=\sum_{j\in\Z}Y_j
\end{equation*}
for any real $c_1,\dots,c_p$, where
\begin{equation*}
Y_j:=\phi_j\ep_j,\quad\phi_j:=\sum_{i=1}^p c_i \psi_{t_i-j},
\end{equation*}
so that $\sum_{j\in\Z}\phi_j^2<\infty$ and $\max_{j\in\Z}|\phi_j|\le m\sum_{i=1}^p |c_i|$.