1) Can we find outliers using k-means, is it a good approach?

Cluster-based approaches are optimal to find clusters, and can be used to detect outliers as
by-products. In the clustering processes, outliers can affect the locations of the cluster centers, even aggregating as a micro-cluster. These characteristics make the cluster-based approaches infeasible to complicated databases.

2) Is there any clustering algorithm which does not accept any input from the user?

Maybe you can achieve some valuable knowledge on this topic:
Dirichlet Process Clustering

Dirichlet-based clustering algorithm can adaptively determine the number of clusters according to the distribution of observation data.

3) Can we use support vector machine or any other supervised learning algorithm for outlier detection?

Any Supervised learning algorithm needs enough labeled training data to construct classifiers. However, a balanced training dataset is not always available for real world problem, such as intrusion detection, medical diagnostics. According to the definition of Hawkins Outlier("Identification of Outliers". Chapman and Hall, London, 1980), the number of normal data is much larger than that of outliers. Most supervised learning algorithms can't achieve an efficient classifier on the above unbalanced dataset.

4) What is the pros and cons of each approach?

Over the past several decades, the research on outlier detection varies from the global computation to the local analysis, and the descriptions of outliers vary from the binary interpretations to probabilistic representations. According to hypotheses of outlier detection models, outlier detection algorithms can be divided into four kinds: Statistic-based algorithms, Cluster-based algorithms, Nearest Neighborhood based algorithms, and Classifier-based algorithms. There are several valuable surveys on outlier detection:

Hodge, V. and Austin, J. "A survey of outlier detection methodologies", Journal of Artificial Intelligence Review, 2004.

Chandola, V. and Banerjee, A. and Kumar, V. "Outlier detection: A survey", ACM Computing Surveys, 2007.