You need to define your measure of quality :-) An image may be compressed in a way that a human observer does not see any loss in quality, even though the image data changed slightly. This is lossy compression. In lossless compression, you will be able to reconstruct the original data bit for bit.
Works by "intelligently repackaging data". Classic algorithms here are Huffman Coding or Run-Length Coding. The .png format or some flavors of .tiff store images losslessly.
Unfortunately, there are limits on how much lossless coding can do: Data carries a certain amount of information, which puts a lower bound on how small your file can get.
Works by reordering data into "important" and "uninportant" parts, and drops the unimportant ones. Examples for this reordering are Vector Quantization or Discrete Cosine Transform. The most popular format for lossy image compression is .jpeg.
In lossy compression, there is no strict lower bound on how small your file size can get. However, there is a threshold where human observers start seeing compression artifacts. Still, for many image types, lossy algorithms achive smaller file sizes than lossless ones without a noticeable drop in quality.