Li Min, Fan Xinnan, Zhang Xuewu. Anomaly detector based on bionic nonlinear filter for remote sensing data[J]. Journal of Image and Graphics, 2016, 21(8): 1088-1095. DOI: 10.11834/jig.20160813.
Anomaly detector has become increasingly important in remote sensing data analysis and has been used in many applications
such as environmental and agricultural monitoring
geological exploration
and national defense security. According to special spectral content
an anomaly target has an obvious edge feature
which corresponds to a high frequency. By contrast
the background corresponds to a low frequency because of its smooth spectral content. Considering different spectral contents from the background
the anomaly target can be filtered out from the high frequency of the edge. A fast anomaly detector has been proposed to detect anomaly by linear filter of the spatial domain. However
texture and detail of clutter background also have the characteristic of high frequency. Linear filter has difficulty separating the anomaly from the clutter background accurately. Compared with bright background object
spatial salience of anomaly will be decreased. Furthermore
small size of anomaly will lead to subpixel anomaly
which will blur the edge feature of the target. A small anomaly target may not be successfully detected by a spatial filter. Conversely
cross analysis of a binary image reduced the complexity of computation. However
self-correlation of the large anomaly target will lead to a hollow effect in the center area. Inspired by the nonlinear filter mechanism of biotical vision
a bionic anomaly detection algorithm is proposed. In the natural world
a biotical vision system can accurately detect a small moving target
even in a cluttered environment. Redundancy information of the background will be inhibited because of its invariance on the spatial or temporal domain. Only features can be maintained as a high-order feature caused by a variance on the spatial and temporal domains. In fact
an anomalous spectral content of the target not only reflects a single band (spatial domain) but also reflects all the bands. Inspired by biotical vision
a correlated-type nonlinear filter is proposed to extract the high-order feature within the joint spatial and spectral domain. Like a moving target
the anomaly can be detected because of its spatial spectral wave
which contains spectral content of all bands. Simultaneously
the clutter background will be inhibited effectively because of its correlation with the spectral wave within the local spatial domain. Furthermore
the inner window is applied as a protective band
which can prevent the correlation of the anomaly target self
to avoid the hollow effect of a large anomaly target. Simulated and real data were applied to verify the utility of the proposed method. Experimental results show that the proposed anomaly detector has a good performance for small anomalies
which are rounded by clutter background. For a larger anomaly target
the hollow effect had to be removed within cross analysis by the protective band. This study proposed a bionic anomaly detector based on nonlinear filter. The high-order feature is extracted by nonlinear filter
with joint spatial and spectral information. The high-order feature has a strong robustness under the clutter background
particularly for a small target. Simultaneously
the inner window as protective band improves the hollow effect of a large anomaly target.