Target detection in remotely sensed images can be conducted spatially spect
rally or both. The difficulty of detecting targets in remotely sensed image
s with spatial image analysis arises from the fact that the ground sampling
distance is generally larger than the size of targets of interest in which
case targets are embedded in a single pixel and cannot be detected spatial
ly. Cinder this circumstance target detection must be carried out at subpix
el level and spectral analysis offers a valuable alternative. In this paper
, the problem of subpixel spectral detection of targets in remote sensing i
mages is considered, where two constrained target detection approaches are
studied and compared, One is a target abundance-constrained approach, refer
red to as nonnegatively constrained least squares (NCLS) method. It is a co
nstrained least squares spectral mixture analysis method which implements a
nonnegativity constraint on the abundance fractions of targets of interest
. Another is a target signature-constrained approach, called constrained en
ergy minimization (CEM) method, it constrains the desired target signature
with a specific gain while minimizing effects caused by other unknown signa
tures, A quantitative study is conducted to analyze the advantages and disa
dvantages of both methods, Some suggestions are further proposed to mitigat
e their disadvantages.