Cancer is a disease that occurs as a result of uncontrolled division and proliferation of cells. The number of cancer cases has been on the rise over the recent years.. Colon cancer is one of the most common types of cancer in the world. Polyps that can be seen in the large intestine can cause cancer if not removed with early intervention. Deep learning and image segmentation techniques are used to minimize the number of polyps that goes unnoticed by the experts during the diagnosis. Although these techniques give good results, they require too many parameters. We propose a new model to solve this problem. Our proposed model includes less parameters as well as outperforming the success of the state of the art models. In the proposed model, a partial decoder is used to reduce the number of parameters while maintaning success. EfficientNetB0, which gives successfull results as well as requiring few parameters, is used in the encoder part. Since polyps have variable aspect and aspect ratios, an asymetric convolution block was used instead of using classic convolution block. Kvasir and CVC-ClinicDB datasets were seperated as training, validation and testing, and CVC-ColonDB, ETIS and Endoscene datasets were used for testing. According to the dice metric, our model had the best results with %71.8 in the ColonDB test dataset, %89.3 in the EndoScene test dataset and %74.8 in the ETIS test dataset. Our model requires a total of 2.626.337 parameters. When we compare it in the literature, according to similar studies, the model that requires the least parameters is U-Net++ with 9.042.177 parameters.