Open In App
Related Articles

Difference between Lossy Compression and Lossless Compression

Improve
Improve
Improve
Like Article
Like
Save Article
Save
Report issue
Report
Data Compression is a technique in which the size of data is reduced without loss of information. Lossy compression and Lossless compression are the categories of data compression method. The main difference between the two compression techniques (lossy compression and Lossless compression) is that, The lossy compression technique does not restored the data in its original form, after decompression on the other hand lossless compression restores and rebuilt the data in its original form, after decompression. Difference between Lossy Compression and Lossless Compression:
S.NO Lossy Compression Lossless Compression
1. Lossy compression is the method which eliminate the data which is not noticeable. While Lossless Compression does not eliminate the data which is not noticeable.
2. In Lossy compression, A file does not restore or rebuilt in its original form. While in Lossless Compression, A file can be restored in its original form.
3. In Lossy compression, Data’s quality is compromised. But Lossless Compression does not compromise the data’s quality.
4. Lossy compression reduces the size of data. But Lossless Compression does not reduce the size of data.
5. Algorithms used in Lossy compression are: Transform coding, Discrete Cosine Transform, Discrete Wavelet Transform, fractal compression etc. Algorithms used in Lossless compression are: Run Length Encoding, Lempel-Ziv-Welch, Huffman Coding, Arithmetic encoding etc.
6. Lossy compression is used in Images, audio, video. Lossless Compression is used in Text, images, sound.
7. Lossy compression has more data-holding capacity. Lossless Compression has less data-holding capacity than Lossy compression technique.
8. Lossy compression is also termed as irreversible compression. Lossless Compression is also termed as reversible compression.

Last Updated : 08 Jun, 2020
Like Article
Save Article
Previous
Next
Share your thoughts in the comments
Similar Reads