The only way to represent the optional relationship while avoiding nulls is to use another table, as some other answers have suggested. Then the absence of a row for a given Person indicates the person has no Invoice. You can enforce a 1:1 relationship between this table and the Person table by making person_id be the primary or unique key:
CREATE TABLE PersonInvoice (
person_id INT NOT NULL PRIMARY KEY,
invoice_id INT NOT NULL,
FOREIGN KEY (person_id) REFERENCES Person(id),
FOREIGN KEY (invoice_id) REFERENCES Invoice(id)
If you want to permit each person to have multiple invoices, you can declare the primary key as the pair of columns instead.
But this solution is to meet your requirement to avoid NULL. This is an artificial requirement. NULL has a legitimate place in a data model.
Some relational database theorists like Chris Date eschew NULL, explaining that the existence of NULL leads to some troubling logical anomalies in relational logic. For this camp, the absence of a row as shown above is a better way to represent missing data.
But other theorists, including E. F. Codd who wrote the seminal paper on relational theory, acknowledged the importance of a placeholder that means either "not known" or "not applicable." Codd even proposed in a 1990 book that SQL needed two placeholders, one for "missing but applicable" (i.e. unknown), and the other for "missing but inapplicable."
To me, the anomalies we see when using NULL in certain ways are like the undefined results we see in arithmetic when we divide by zero. The solution is: don't do that.
But certainly we shouldn't use any non-NULL value like 0 or '' (empty string) to represent missing data. And likewise we shouldn't use a NULL as if it were an ordinary scalar value.
I wrote more about NULL in a chapter titled "Fear of the Unknown" in my book, SQL Antipatterns: Avoiding the Pitfalls of Database Programming.